Rochester 1-Meter Land Cover Classification (Impervious Surface Focused)
2016-08-01
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2016-06-30
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-92.56 -92.39 44.10 43.88
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Title
Rochester 1-Meter Land Cover Classification (Impervious Surface Focused)
Published Date
2016-08-01
Authors
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Knight, Joe F
jknight@umn.edu
jknight@umn.edu
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Map
Spatial Data
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Spatial Data
Abstract
A high-resolution (1-meter) land cover classification raster dataset was completed for three different geographic areas in Minnesota: Duluth, Rochester, and the seven-county Twin Cities Metropolitan area. This classification was created using high-resolution multispectral National Agriculture Imagery Program (NAIP) leaf-on imagery (2015), spring leaf-off imagery (2011- 2014), Multispectral derived indices, LiDAR data, LiDAR derived products, and other thematic ancillary data including the updated National Wetlands Inventory, LiDAR building footprints, airport, OpenStreetMap roads and railroads centerlines. These data sets were integrated using an Object-Based Image Analysis (OBIA) approach to classify 12 land cover classes: Deciduous Tree Canopy, Coniferous Tree Canopy, Buildings, Bare Soil, other Paved surface, Extraction, Row Crop, Grass/Shrub, Lakes, Rivers, Emergent Wetland, Forest and Shrub Wetland.
We mapped the 12 classes by using an OBIA approach through the creation of customized rule sets for each area. We used the Cognition Network Language (CNL) within the software eCognition Developer to develop the customized rule sets. The eCognition Server was used to execute a batch and parallel processing which greatly reduced the amount of time to produce the classification. The classification results were evaluated for each area using independent stratified randomly generated points. Accuracy assessment estimators included overall accuracies, producers accuracy, users accuracy, and kappa coefficient. The combination of spectral data and LiDAR through an OBIA method helped to improve the overall accuracy results providing more aesthetically pleasing maps of land cover classes with highly accurate results.
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Important note: This layer is optimized for impervious surface mapping. In places where tree canopy overhangs an impervious surface such as a street, the canopy edge is cut at the street edge to show the full extent of the impervious surface. If you require full tree canopy mapping, use our urban tree canopy layer here:
https://conservancy.umn.edu/handle/11299/183470
https://conservancy.umn.edu/handle/11299/183470
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Host, Trevor K; Rampi, Lian P; Knight, Joe F. (2016). Rochester 1-Meter Land Cover Classification (Impervious Surface Focused). Retrieved from the Data Repository for the University of Minnesota (DRUM), http://doi.org/10.13020/D6DW2V.
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Rochester.zip
Compressed ZIP file of the Rochester 1-Meter Land Cover Classification
(11.96 MB)
rochester_LC.tif
Rochester 1-Meter Land Cover Classification
(328.61 MB)
Rochester_1m_LandCover_Metadata.html
Metadata for Rochester 1-Meter Land Cover Classification in HTML Format
(31.97 KB)
Rochester_1m_LandCover_Metadata.xml
Metadata for Rochester 1-Meter Land Cover Classification in XML Format
(41.47 KB)
Map_and_Legend.pdf
Rochester Overview Map and Legend
(921.97 KB)
Classification scheme for Level 1 and 2 land cover classes.pdf
Classification Scheme
(70.48 KB)
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