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<rpIndName>Tim Marcella </rpIndName>
<rpOrgName>NV5 Geospatial</rpOrgName>
<rpPosName>Program Manager</rpPosName>
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<delPoint>1100 NE Circle Blvd #126</delPoint>
<city>Corvallis</city>
<adminArea>Oregon</adminArea>
<postCode>97330</postCode>
<country>US</country>
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<voiceNum>541-752-1204</voiceNum>
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<cntHours>0800 to 1700 PST</cntHours>
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<displayName>Tim Marcella </displayName>
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<rpIndName>Tim Marcella </rpIndName>
<rpOrgName>NV5 Geospatial</rpOrgName>
<rpPosName>Program Manager</rpPosName>
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<delPoint>1100 NE Circle Blvd #126</delPoint>
<city>Corvallis</city>
<adminArea>Oregon</adminArea>
<postCode>97330</postCode>
<country>US</country>
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<voiceNum>541-752-1204</voiceNum>
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<cntHours>0800 to 1700 PST</cntHours>
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<displayName>Tim Marcella </displayName>
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<createDate>2021-05-20T00:00:00</createDate>
<pubDate>2021-05-21T00:00:00</pubDate>
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<resTitle Sync="TRUE">impervious_complete</resTitle>
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<PresFormCd Sync="TRUE" value="011">
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<exDesc>The source data for this analysis will be the Statewide spring 2020 leaf-off 4-band, 6-inch orthoimagery collected under this scope of work.</exDesc>
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<TM_Period>
<tmBegin>2020-01-01T00:00:00</tmBegin>
<tmEnd>2020-12-31T00:00:00</tmEnd>
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<idPurp>Update 2011 impervious surface raster based on acquired 2020 orthoimagery</idPurp>
<idAbs>Task Overview: NV5 Geospatial updated the Rhode Island impervious data layer through semi-automated methods similar to that developed for the 2011 impervious layer and as accepted by RI Statewide Planning/RI GIS. Update methods used Rhode Island spring 2020, 4-band, 6-inch pixel orthophotography. The State of Rhode Island determined that only real changes between the 2011 and 2020 imagery should be mapped. Errors in the data set were not corrected (unless they were directly associated with a real change) as this would skew change analysis. The minimum mapping unit used for this data layer was 800 square feet. The update process began by creating a machine learning model based on the 2011 impervious data layer. The model was trained on Rhode Island spring 2011, 4-band, 6-inch pixel orthophotography and 2011 2 feet pixel impervious data layer. The machine model is a modified UNET convolutional neural network model. After the machine learning model was trained using 400,000 examples the model was applied to the 2020, 4-band, 6-inch pixel orthophotography. Then changes were detected between the 2011 impervious data layer and the 2020 impervious data layer using a semi-automated process. The changed area was then inspected by a photo interpreter to ensure greater than 95% accuracy and proper look and feel of the data. After the changed area was inspected it was then used to update the 2011 impervious data layer. Areas that were unchanged have not been modified. Validation Overview: For Blocks 1-5, a total of 2500 points were sampled. Of these 2500 points, 50 percent were constrained to fall within polygons defined as having change present, 25 percent near change, and 25 percent in areas where change was not detected. Change is defined as polygons that recieved a classification change and does not include polygons that only received geometric editing during the update process. Points selected "near change" were constrained to fall within a 1,000 foot buffer adjacent to the change polygons. Points selected in unchanged areas were constrained to any area outside of where change was detected. The accuracy analysis was completed using QGIS v3.4.13. Accuracy assesment points were selected by first exporting each stratification layer as a distinct shapefile. Random points within each stratum were generated using a custom tool written in the R programming language. Each point was assessed for classification or change/no change against the finalized dataset compiled for each Block. The classification information was stripped from this dataset to ensure an unbiased assesment. </idAbs>
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<rpIndName>Tim Marcella </rpIndName>
<rpOrgName>NV5 Geospatial</rpOrgName>
<rpPosName>Program Manager</rpPosName>
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<delPoint>1100 NE Circle Blvd #126</delPoint>
<city>Corvallis</city>
<adminArea>Oregon</adminArea>
<postCode>97330</postCode>
<country>US</country>
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<voiceNum>541-752-1204</voiceNum>
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<cntHours>0800 to 1700 PST</cntHours>
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<keyword>Land Cover, Land Use, Anderson Classification</keyword>
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<keyword>US, Rhode Island, New England, Northeast,</keyword>
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<keyword>Impervious</keyword>
<keyword>Land Cover</keyword>
<keyword>Rhode Island</keyword>
<keyword>Environment</keyword>
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<idCredit>RI Department of Administration, Division of Statewide Planning; USGS, University of Rhode Island</idCredit>
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<keyword>Rhode Island Department of Environmental Management, Paul Jordan, Supervising GIS Specialist, 235 Promenade Street, Providence, RI 02908, (401)222-2776x4315, paul.jordan@dem.ri.gov</keyword>
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