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<CreaDate>20220301</CreaDate>
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<SyncOnce>FALSE</SyncOnce>
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<Process Date="20220306" Name="Build Pyramids And Statistics" Time="120729" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\BuildPyramidsandStatistics" export="">BuildPyramidsandStatistics F:\Scratch\ChesapeakeBay_Scratch\chesapeakebay_landcoverchange_20132014_20172018_v2.tif INCLUDE_SUBDIRECTORIES BUILD_PYRAMIDS CALCULATE_STATISTICS NONE # NONE 1 1 0 -1 NONE "Nearest neighbor" Default 75 OVERWRITE # NONE</Process>
<Process Date="20220306" Name="Build Raster Attribute Table" Time="124134" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\BuildRasterAttributeTable" export="">BuildRasterAttributeTable F:\Scratch\ChesapeakeBay_Scratch\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Overwrite NONE</Process>
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<Process Date="20220503" Time="142913" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\AddField">AddField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Alpha "Short (small integer)" # # # # NULLABLE NON_REQUIRED #</Process>
<Process Date="20220503" Time="142928" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif ChangeType rgb_lookup(!Value!, "ct") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="142940" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif LCChange rgb_lookup(!Value!, "desc") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="142952" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Red rgb_lookup(!Value!, "r") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="143004" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Green rgb_lookup(!Value!, "g") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="143015" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Blue rgb_lookup(!Value!, "b") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="143027" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Alpha rgb_lookup(!Value!, "t") "Python 3" "
def rgb_lookup(Value, dict_key):
d1 = { 'lu_code': 1,
        'desc': 'Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 0,
        'ct' : 'No Change',
    }
d2 = { 'lu_code': 2,
        'desc': 'Emergent Wetlands',
        'r' : 0,
        'g' : 168,
        'b' : 132,
        't' : 0,
        'ct' : 'No Change',
    }
d3 = { 'lu_code': 3,
        'desc': 'Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d4 = { 'lu_code': 4,
        'desc': 'Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d5 = { 'lu_code': 5,
        'desc': 'Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 0,
        'ct' : 'No Change',
    }
d6 = { 'lu_code': 6,
        'desc': 'Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d7 = { 'lu_code': 7,
        'desc': 'Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d8 = { 'lu_code': 8,
        'desc': 'Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 0,
        'ct' : 'No Change',
    }
d9 = { 'lu_code': 9,
        'desc': 'Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d10 = { 'lu_code': 10,
        'desc': 'Tree Canopy Over Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 0,
        'ct' : 'No Change',
    }
d11 = { 'lu_code': 11,
        'desc': 'Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 0,
        'ct' : 'No Change',
    }
d12 = { 'lu_code': 12,
        'desc': 'Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 0,
        'ct' : 'No Change',
    }
d13 = { 'lu_code': 13,
        'desc': 'Water to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d14 = { 'lu_code': 14,
        'desc': 'Water to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d15 = { 'lu_code': 15,
        'desc': 'Water to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d16 = { 'lu_code': 16,
        'desc': 'Water to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d17 = { 'lu_code': 17,
        'desc': 'Water to Impervious Structures',
        'r' : 250,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d18 = { 'lu_code': 18,
        'desc': 'Water to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d19 = { 'lu_code': 19,
        'desc': 'Water to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d21 = { 'lu_code': 21,
        'desc': 'Emergent Wetlands to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d23 = { 'lu_code': 23,
        'desc': 'Emergent Wetlands to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d25 = { 'lu_code': 25,
        'desc': 'Emergent Wetlands to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,         'ct' : 'Low Vegetation Gain',
    }
d26 = { 'lu_code': 26,
        'desc': 'Emergent Wetlands to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d27 = { 'lu_code': 27,
        'desc': 'Emergent Wetlands to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d28 = { 'lu_code': 28,
        'desc': 'Emergent Wetlands to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d29 = { 'lu_code': 29,
        'desc': 'Emergent Wetlands to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d31 = { 'lu_code': 31,
        'desc': 'Tree Canopy to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d35 = { 'lu_code': 35,
        'desc': 'Tree Canopy to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d36 = { 'lu_code': 36,
        'desc': 'Tree Canopy to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d37 = { 'lu_code': 37,
        'desc': 'Tree Canopy to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d38 = { 'lu_code': 38,
        'desc': 'Tree Canopy to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d39 = { 'lu_code': 39,
        'desc': 'Tree Canopy to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d41 = { 'lu_code': 41,
        'desc': 'Scrub\Shrub to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d43 = { 'lu_code': 43,
        'desc': 'Scrub\Shrub to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d45 = { 'lu_code': 45,
        'desc': 'Scrub\Shrub to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d46 = { 'lu_code': 46,
        'desc': 'Scrub\Shrub to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d47 = { 'lu_code': 47,
        'desc': 'Scrub\Shrub to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d48 = { 'lu_code': 48,
        'desc': 'Scrub\Shrub to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d49 = { 'lu_code': 49,
        'desc': 'Scrub\Shrub to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d51 = { 'lu_code': 51,
        'desc': 'Low Vegetation to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    } d53 = { 'lu_code': 53,
        'desc': 'Low Vegetation to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d54 = { 'lu_code': 54,
        'desc': 'Low Vegetation to Scrub\Shrub',
        'r' : 76,
        'g' : 230,
        'b' : 0,
        't' : 255,
        'ct' : 'Scrub\Shrub Gain',
    }
d56 = { 'lu_code': 56,
        'desc': 'Low Vegetation to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d57 = { 'lu_code': 57,
        'desc': 'Low Vegetation to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d58 = { 'lu_code': 58,
        'desc': 'Low Vegetation to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d59 = { 'lu_code': 59,
        'desc': 'Low Vegetation to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d61 = { 'lu_code': 61,
        'desc': 'Barren to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d63 = { 'lu_code': 63,
        'desc': 'Barren to Tree Canopy',
        'r' : 38,
        'g' : 155,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d65 = { 'lu_code': 65,
        'desc': 'Barren to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d67 = { 'lu_code': 67,
        'desc': 'Barren to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d68 = { 'lu_code': 68,
        'desc': 'Barren to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d69 = { 'lu_code': 69,
        'desc': 'Barren to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d71 = { 'lu_code': 71,
        'desc': 'Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d73 = { 'lu_code': 73,
        'desc': 'Impervious Structures to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d75 = { 'lu_code': 75,
        'desc': 'Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d76 = { 'lu_code': 76,
        'desc': 'Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d78 = { 'lu_code': 78,
        'desc': 'Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d79 = { 'lu_code': 79,
        'desc': 'Impervous Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
            }
d81 = { 'lu_code': 81,
        'desc': 'Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d83 = { 'lu_code': 83,
        'desc': 'Other Impervious to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d85 = { 'lu_code': 85,
        'desc': 'Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d86 = { 'lu_code': 86,
        'desc': 'Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d87 = { 'lu_code': 87,
        'desc': 'Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d89 = { 'lu_code': 89,
        'desc': 'Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d91 = { 'lu_code': 91,
        'desc': 'Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d93 = { 'lu_code': 93,
        'desc': 'Impervious Roads to Tree Canopy',
        'r' : 38,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Gain',
    }
d95 = { 'lu_code': 95,
        'desc': 'Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d96 = { 'lu_code': 96,
        'desc': 'Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d97 = { 'lu_code': 97,
        'desc': 'Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d98 = { 'lu_code': 98,
        'desc': 'Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d101 = { 'lu_code': 101,
        'desc': 'Tree Canopy Over Impervious Structures to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d105 = { 'lu_code': 105,
        'desc': 'Tree Canopy Over Impervious Structures to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d106 = { 'lu_code': 106,
        'desc': 'Tree Canopy Over Impervious Structures to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d107 = { 'lu_code': 107,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d108 = { 'lu_code': 108,
        'desc': 'Tree Canopy Over Impervious Structures to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d109 = { 'lu_code': 109,
        'desc': 'Tree Canopy Over Impervious Structures to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d111 = { 'lu_code': 111,
        'desc': 'Tree Canopy Over Other Impervious to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d115 = { 'lu_code': 115,
        'desc': 'Tree Canopy Over Other Impervious to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d116 = { 'lu_code': 116,
        'desc': 'Tree Canopy Over Other Impervious to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d117 = { 'lu_code': 117,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d118 = { 'lu_code': 118,
        'desc': 'Tree Canopy Over Other Impervious to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d119 = { 'lu_code': 119,
        'desc': 'Tree Canopy Over Other Impervious to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d121 = { 'lu_code': 121,
        'desc': 'Tree Canopy Over Impervious Roads to Water',
        'r' : 0,
        'g' : 97,
        'b' : 255,
        't' : 255,
        'ct' : 'Water Gain',
    }
d125 = { 'lu_code': 125,
        'desc': 'Tree Canopy Over Impervious Roads to Low Vegetation',
        'r' : 165,
        'g' : 245,
        'b' : 122,
        't' : 255,
        'ct' : 'Low Vegetation Gain',
    }
d126 = { 'lu_code': 126,
        'desc': 'Tree Canopy Over Impervious Roads to Barren',
        'r' : 255,
        'g' : 170,
        'b' : 0,
        't' : 255,
        'ct' : 'Barren Gain',
    }
d127 = { 'lu_code': 127,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Structures',
        'r' : 255,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Structures Gain',
    }
d128 = { 'lu_code': 128,
        'desc': 'Tree Canopy Over Impervious Roads to Other Impervious',
        'r' : 178,
        'g' : 178,
        'b' : 178,
        't' : 255,
        'ct' : 'Other Impervious Gain',
    }
d129 = { 'lu_code': 129,
        'desc': 'Tree Canopy Over Impervious Roads to Impervious Roads',
        'r' : 0,
        'g' : 0,
        'b' : 0,
        't' : 255,
        'ct' : 'Impervious Roads Gain',
    }
d210 = { 'lu_code': 210,
        'desc': 'Impervious Structures to Tree Canopy Over Impervious Structures',
        'r' : 115,
        'g' : 115,
        'b' : 0,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Structures Gain',
    }
d211 = { 'lu_code': 211,
        'desc': 'Other Impervious to Tree Canopy Over Other Impervious',
        'r' : 205,
        'g' : 205,
        'b' : 102,
        't' : 255,
        'ct' : 'Tree Canopy Over Other Impervious Gain',
    }
d212 = { 'lu_code': 212,
        'desc': 'Impervious Roads to Tree Canopy Over Impervious Roads',
        'r' : 255,
        'g' : 255,
        'b' : 115,
        't' : 255,
        'ct' : 'Tree Canopy Over Impervious Roads Gain',
    }
d254 = { 'lu_code': 254,
        'desc': 'Aberdeen Proving Ground',
        'r' : 197,
        'g' : 0,
        'b' : 255,
        't' : 255,
        'ct' : 'Aberdeen Proving Ground',
    }
code_dict = {
        1 : d1,
        2 : d2,
        3 : d3,
        4 : d4,
        5 : d5,
        6 : d6,
        7 : d7,
        8 : d8,
        9 : d9,
        10 : d10,
        11 : d11,
        12 : d12,
        13 : d13,
        14 : d14,
        15 : d15,
        16 : d16,
        17 : d17,
        18 : d18,
        19 : d19,
        21 : d21,
        23 : d23,
        25 : d25,
        26 : d26,
        27 : d27,
        28 : d28,
        29 : d29,
        31 : d31,
        35 : d35,
        36 : d36,
        37 : d37,
        38 : d38,
        39 : d39,
        41 : d41,
        43 : d43,
        45 : d45,
        46 : d46,
        47 : d47,
        48 : d48,
        49 : d49,
        51 : d51,
        53 : d53,
        54 : d54,
        56 : d56,
        57 : d57,
        58 : d58,
        59 : d59,
        61 : d61,
        63 : d63,
        65 : d65,
        67 : d67,
        68 : d68,
        69 : d69,
        71 : d71,
        73 : d73,
        75 : d75,
        76 : d76,
        78 : d78,
        79 : d79,
        81 : d81,
        83 : d83,
        85 : d85,
        86 : d86,
        87 : d87,
        89 : d89,
        91 : d91,
        93 : d93,
        95 : d95,
        96 : d96,
        97 : d97,
        98 : d98,
        101 : d101,
        105 : d105,
        106 : d106,
        107 : d107,
        108 : d108,
        109 : d109,
        111 : d111,
        115 : d115,
        116 : d116,
        117 : d117,
        118 : d118,
        119 : d119,
        121 : d121,
        125 : d125,
        126 : d126,
        127 : d127,
        128 : d128,
        129 : d129,
        210 : d210,
        211 : d211,
        212 : d212,
        254 : d254
                } try:
if Value in code_dict.keys():
return code_dict[Value][dict_key]
else:
return code_dict[0][dict_key]
except:
print(Value)
" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220503" Time="143032" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\SetRasterProperties">SetRasterProperties Z:\landuse\version2\chesapeakebay_landcoverchange_20132014_20172018_v2.tif Thematic # # # # #</Process>
</lineage>
<itemProps>
<itemName Sync="TRUE">chesapeakebay_landcoverchange_20132014_20172018_v2.tif</itemName>
<itemLocation>
<linkage Sync="TRUE">file://M:\Temp\CBW\chesapeakebay_landcoverchange_20132014_20172018_v2.tif</linkage>
<protocol Sync="TRUE">Local Area Network</protocol>
</itemLocation>
<nativeExtBox>
<westBL Sync="TRUE">1306955.000000</westBL>
<eastBL Sync="TRUE">1802680.000000</eastBL>
<southBL Sync="TRUE">1656725.000000</southBL>
<northBL Sync="TRUE">2529176.000000</northBL>
<exTypeCode Sync="TRUE">1</exTypeCode>
</nativeExtBox>
<imsContentType Sync="TRUE">002</imsContentType>
</itemProps>
<coordRef>
<type Sync="TRUE">Projected</type>
<geogcsn Sync="TRUE">GCS_North_American_1983</geogcsn>
<csUnits Sync="TRUE">Linear Unit: Meter (1.000000)</csUnits>
<projcsn Sync="TRUE">USA_Contiguous_Albers_Equal_Area_Conic_USGS_version</projcsn>
<peXml Sync="TRUE">&lt;ProjectedCoordinateSystem xsi:type='typens:ProjectedCoordinateSystem' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/10.6'&gt;&lt;WKT&gt;PROJCS[&amp;quot;USA_Contiguous_Albers_Equal_Area_Conic_USGS_version&amp;quot;,GEOGCS[&amp;quot;GCS_North_American_1983&amp;quot;,DATUM[&amp;quot;D_North_American_1983&amp;quot;,SPHEROID[&amp;quot;GRS_1980&amp;quot;,6378137.0,298.257222101]],PRIMEM[&amp;quot;Greenwich&amp;quot;,0.0],UNIT[&amp;quot;Degree&amp;quot;,0.0174532925199433]],PROJECTION[&amp;quot;Albers&amp;quot;],PARAMETER[&amp;quot;False_Easting&amp;quot;,0.0],PARAMETER[&amp;quot;False_Northing&amp;quot;,0.0],PARAMETER[&amp;quot;Central_Meridian&amp;quot;,-96.0],PARAMETER[&amp;quot;Standard_Parallel_1&amp;quot;,29.5],PARAMETER[&amp;quot;Standard_Parallel_2&amp;quot;,45.5],PARAMETER[&amp;quot;Latitude_Of_Origin&amp;quot;,23.0],UNIT[&amp;quot;Meter&amp;quot;,1.0],AUTHORITY[&amp;quot;Esri&amp;quot;,102039]]&lt;/WKT&gt;&lt;XOrigin&gt;-16901100&lt;/XOrigin&gt;&lt;YOrigin&gt;-6972200&lt;/YOrigin&gt;&lt;XYScale&gt;266467840.99085236&lt;/XYScale&gt;&lt;ZOrigin&gt;-100000&lt;/ZOrigin&gt;&lt;ZScale&gt;10000&lt;/ZScale&gt;&lt;MOrigin&gt;-100000&lt;/MOrigin&gt;&lt;MScale&gt;10000&lt;/MScale&gt;&lt;XYTolerance&gt;0.001&lt;/XYTolerance&gt;&lt;ZTolerance&gt;0.001&lt;/ZTolerance&gt;&lt;MTolerance&gt;0.001&lt;/MTolerance&gt;&lt;HighPrecision&gt;true&lt;/HighPrecision&gt;&lt;WKID&gt;102039&lt;/WKID&gt;&lt;LatestWKID&gt;102039&lt;/LatestWKID&gt;&lt;/ProjectedCoordinateSystem&gt;</peXml>
</coordRef>
<RasterProperties>
<General>
<PixelDepth Sync="TRUE">8</PixelDepth>
<HasColormap Sync="TRUE">FALSE</HasColormap>
<CompressionType Sync="TRUE">None</CompressionType>
<NumBands Sync="TRUE">1</NumBands>
<Format Sync="TRUE">TIFF</Format>
<HasPyramids Sync="TRUE">TRUE</HasPyramids>
<SourceType Sync="TRUE">continuous</SourceType>
<PixelType Sync="TRUE">unsigned integer</PixelType>
<NoDataValue Sync="TRUE">0</NoDataValue>
</General>
</RasterProperties>
</DataProperties>
<SyncDate>20220307</SyncDate>
<SyncTime>07223200</SyncTime>
<ModDate>20220307</ModDate>
<ModTime>07223200</ModTime>
<scaleRange>
<minScale>150000000</minScale>
<maxScale>5000</maxScale>
</scaleRange>
<ArcGISProfile>FGDC</ArcGISProfile>
</Esri>
<dataIdInfo>
<idCitation>
<date>
<pubDate>2022-01-19T00:00:00</pubDate>
</date>
<citRespParty>
<rpIndName>Jarlath O'Neil-Dunne</rpIndName>
<rpOrgName>University of Vermont Spatial Analysis Laboratory</rpOrgName>
<rpPosName>Director</rpPosName>
<role>
<RoleCd value="006"/>
</role>
<rpCntInfo>
<cntAddress addressType="physical">
<delPoint>81 Carrigan Dr.</delPoint>
<city>Burlington</city>
<adminArea>Vermont</adminArea>
<postCode>05405</postCode>
<eMailAdd>Jarlath.ONeil-Dunne@uvm.edu</eMailAdd>
<country>US</country>
</cntAddress>
<cntPhone>
<voiceNum>802-656-3324</voiceNum>
</cntPhone>
</rpCntInfo>
</citRespParty>
<resTitle>Chesapeake Bay Land Cover Change 13/14 to 17/18</resTitle>
<presForm>
<PresFormCd Sync="TRUE" value="005"/>
</presForm>
</idCitation>
<idPurp>This land cover change dataset is intended to facilitate analysis of landscape change in the Chesapeake Bay Watershed through identification of specific areas of land cover conversion during the analysis period. The dataset was developed by the University of Vermont Spatial Analysis Laboratory in cooperation with Chesapeake Conservancy (CC) and U.S. Geological Survey (USGS) as part of a 6-year Cooperative Agreement between Chesapeake Conservancy and the U.S. Environmental Protection Agency (EPA) and a separate Interagency Agreement between the USGS and EPA to provide geospatial support to the Chesapeake Bay Program Office.</idPurp>
<idCredit>University of Vermont Spatial Analysis Laboratory, Chesapeake Conservancy, U.S. Geological Survey, U.S. Environmental Protection Agency Chesapeake Bay Program</idCredit>
<idAbs>This dataset includes 79 land cover change classes and covers 206 counties intersecting and adjacent to the Chesapeake Bay Watershed. It was derived from available LiDAR imagery and aerial multi-spectral imagery produced by the National Agriculture Imagery Program (NAIP) for the years 2013/14 and 2017/18. The classification was designed to be consistent with existing 2013/14 land cover data. Using object-based image analysis software and mapping techniques, the original 2013/14 dataset was first refined, where necessary, using LiDAR and NAIP imagery, regional building polygons, and local planimetric data representing roads and buildings. To create the 2017/18 land cover dataset, changes in image objects were assessed from 2013/14 to 2017/18 based primarily on multi-date LiDAR imagery, if available, followed by multi-date NAIP imagery (available for all counties). Similar rules and logic used to classify the 2013/14 land cover data were applied to the change objects to produce a comparable land cover dataset for 2017/18. Draft output was manually reviewed and edited to eliminate obvious errors of omission and commission, focusing on the most important types of landscape change: 1) tree canopy loss; and 2) impervious surfaces gain. The final dataset contains 79 change classes plus the original 12 classes for features that had not changed. The specific analysis periods for each major Bay jurisdiction are: Delaware, 2013-2018; District of Columbia, 2013-2017; Maryland, 2013-2017/2018; New York, 2013-2017; Pennsylvania, 2013-2017; Virginia, 2014-2018; and West Virginia, 2014-2018. For detailed methods and documentation, please see: https://www.chesapeakeconservancy.org/conservation-innovation-center/high-resolution-data/lulc-data-project-2022/</idAbs>
<searchKeys>
<keyword>land cover</keyword>
<keyword>land cover change</keyword>
<keyword>Chesapeake Bay</keyword>
<keyword>Delaware</keyword>
<keyword>District of Columbia</keyword>
<keyword>Maryland</keyword>
<keyword>New York</keyword>
<keyword>Pennsylvania</keyword>
<keyword>Virginia</keyword>
<keyword>West Virginia</keyword>
</searchKeys>
<themeKeys>
<keyword>land cover</keyword>
<keyword>land-cover change</keyword>
</themeKeys>
<placeKeys>
<keyword>Chesapeake Bay Watershed</keyword>
<keyword>Delaware</keyword>
<keyword>District of Columbia</keyword>
<keyword>Maryland</keyword>
<keyword>New York</keyword>
<keyword>Pennsylvania</keyword>
<keyword>Virginia</keyword>
<keyword>West Virginia</keyword>
</placeKeys>
<tempKeys>
<keyword>2013\2014</keyword>
<keyword>2017\2018</keyword>
</tempKeys>
<envirDesc Sync="TRUE"> Version 6.2 (Build 9200) ; Esri ArcGIS 10.6.1.9270</envirDesc>
<dataLang>
<languageCode Sync="TRUE" value="eng"/>
<countryCode Sync="TRUE" value="USA"/>
</dataLang>
<spatRpType>
<SpatRepTypCd Sync="TRUE" value="002"/>
</spatRpType>
<dataExt>
<geoEle>
<GeoBndBox esriExtentType="search">
<exTypeCode Sync="TRUE">1</exTypeCode>
<westBL Sync="TRUE">-81.108473</westBL>
<eastBL Sync="TRUE">-73.290995</eastBL>
<northBL Sync="TRUE">44.720822</northBL>
<southBL Sync="TRUE">36.212924</southBL>
</GeoBndBox>
</geoEle>
</dataExt>
<tpCat>
<TopicCatCd value="007"/>
</tpCat>
<resConst>
<Consts>
<useLimit>The organizations responsible for generating and funding this dataset make no representations of any kind including, but not limited to the warranties of merchantability or fitness for a particular use, nor are any such warranties to be implied with respect to the data. The data have not received final approval by the U.S. Geological Survey (USGS) and are provided on the condition that neither the USGS nor the U.S. Government shall be held liable for any damages resulting from the authorized or unauthorized use of the data. Although every effort has been made to ensure the accuracy of information, errors may be reflected in data supplied. The user must be aware of data conditions and bear responsibility for the appropriate use of the information with respect to possible errors, original map scale, collection methodology, currency of data, and other conditions. Credit should always be given to the data source when this data is transferred, altered, or used for analysis.</useLimit>
</Consts>
</resConst>
</dataIdInfo>
<dqInfo>
<dataLineage>
<statement>This map was based on a 12-class land-cover map for the Chesapeake Bay Watershed, previously developed for 2013\2014 (Time Period 1, or T1). The T1 map was first refined as necessary using LiDAR, multispectral imagery, and thematic GIS data, where available, that corresponded to the same 2013\2014 time period. Landscape that had occurred since T1 were then identified using LiDAR, multispectral imagery, and thematic GIS data, where available, that corresponded to 2017\2018 (Time Period 2, or T2). Each combination of land-cover change was coded into the output map, making it possible to reconstitute land cover for either T1 or T2. All modeling was performed in eCognition, state-of-the-art mapping software that uses object-based image analysis to segment and classify source data into meaningful landscape features.</statement>
<dataSource>
<srcDesc>12-class Land Cover Map for the Chesapeake Bay Watershed, 2013\2014 (Time Period 1, or T1), 1-meter Resolution. Developed by the Chesapeake Conservancy (VA, MD, NY, WV) and the University of Vermont (PA, DE). This map contains the following classes: 1) Water; 2) Emergent Wetlands; 3) Tree Canopy; 4) Scrub\Shrub; 5) Low Vegetation; 6) Barren; 7) Impervious Structures; 8) Other Impervious; 9) Impervious Roads; 10) Tree Canopy Over Impervious Structures; 11) Tree Canopy Over Other Impervious; and 12) Tree Canopy Over Impervious Roads.</srcDesc>
</dataSource>
<dataSource>
<srcDesc>LiDAR, 2013/2014 (Time Period 1, or T1), Resolution Dependent on Location. Where available, original LiDAR point clouds were converted into derivatives that facilitate landscape analysis, including a digital elevation model (DEM) and a digital surface model (DSM). The DEM was subtracted from the DSM to produce a normalized digital surface model (nDSM) that indicates the height of aboveground features such as buildings and trees. NOTE: T1 LiDAR was not available for every county in the Chesapeake Bay Watershed. In such cases, modeling relied more on other input datasets and subsequent manual review.</srcDesc>
</dataSource>
<dataSource>
<srcDesc>LiDAR, 2017/2018 (Time Period 2, or T2), Resolution Dependent on Location. Where available, original LiDAR point clouds were converted into derivatives that facilitate landscape analysis, including a digital elevation model (DEM) and a digital surface model (DSM). The DEM was subtracted from the DSM to produce a normalized digital surface model (nDSM) that indicates the height of aboveground features such as buildings and trees. NOTE: T2 LiDAR was not available for every county in the Chesapeake Bay Watershed. In such cases, modeling relied more on other input datasets and subsequent manual review.</srcDesc>
</dataSource>
<dataSource>
<srcDesc>National Agricultural Imagery Program (NAIP) 4-band Imagery, Leaf-on, 2013/2014 (Time Period 1, or T1), Resolution Dependent on Location.</srcDesc>
</dataSource>
<dataSource>
<srcDesc>National Agricultural Imagery Program (NAIP) 4-band Imagery, Leaf-on, 2017/2018 (Time Period 2, or T2), Resolution Dependent on Location.</srcDesc>
</dataSource>
<dataSource>
<srcDesc>Thematic GIS Datasets, Various Dates. Thematic datasets representing building footprints, roads, road centerlines, sidewalks, driveways, parking lots, alleys, county boundaries, and other datasets were used to augment change detection. NOTE: Because datasets varied widely in availability, quality, and chronology, they were not used in all Chesapeake Bay counties.</srcDesc>
</dataSource>
<prcStep>
<stepDesc>Land-cover change mapping was performed in eCognition, state-of-the-art software for performing object-based image analysis. This expert-system technique segments input datasets into meaningful landscape objects and classifies them according to both their individual characteristics (e.g., vegetation content from spectral imagery, vegetation height from LiDAR) and their relationships to adjacent features. First, the existing T1 land-cover map for the Chesapeake Bay Watershed was refined, where necessary, using available LiDAR, multispectral imagery, and thematic GIS datasets. Refinement of the T1 map maximized its value in subsequent change detection. The T1 map was then compared to T2 data inputs, focusing on the most important areas of landscape change: 1) tree-canopy loss; and 2) impervious-surfaces gain. The final map contained 79 change classes plus the original 12 classes for features that had not changed. Change combinations unlikely to occur in the study area during the analysis period were ignored (e.g., Impervious Structures to Scrub\Shrub). Tree-canopy change classes (No Change, Gain, Loss) were then exported as vector polygons for use in manual review and editing. Impervious surfaces consolidated into a generic category and barren features were also exported as simple change classes (No Change, Gain, Loss) and exported for manual review.</stepDesc>
<stepDateTm>2020-03-01T00:00:00</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>The tree-canopy, impervious, and barren change classes exported as vector polygons were manually reviewed and edited in ArcPro. Obvious errors of omission and commission were removed to improve the aesthetics and accuracy of the change classes.</stepDesc>
<stepDateTm>2020-05-01T00:00:00</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>The manually-reviewed and edited vector polygons representing changes to tree canopy, impervious surfaces, and barren features were incorporated into the draft classification using eCognition. This review draft was then submitted to project stakeholders for further review and comment.</stepDesc>
<stepDateTm>2020-07-01T00:00:00</stepDateTm>
</prcStep>
<prcStep>
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