An enhanced national-scale urban tree canopy cover dataset for the United States Data Release (2025)
March 13, 2025
Moderate-resolution (30 m) national map products have limited capacity to represent fine-scale, heterogeneous urban forms and processes, yet systematic improvements from incorporating higher resolution predictor data remain rare. In this study, we applied random forest models to high-resolution land cover data for 71 U.S. urban areas, moderate-resolution National Land Cover Database (NLCD) Tree Canopy Cover (TCC), and additional explanatory climatic and structural data to develop an enhanced U.S.-scale urban TCC dataset. With an overall R2 of 0.747, our model estimated TCC within 3% for 62 urban areas and added 13.4% more city-level TCC on average, compared to the native NLCD TCC product. Multiple cross-validations indicated model stability suitable for building a national-scale TCC dataset (median R2 of 0.752, 0.675, and 0.743 for 1,000-fold cross validation, urban area leave-one-out cross validation, and cross validation by Census block group median year built, respectively). Additionally, our model code can be used to improve moderate-resolution TCC in other parts of the world where high-resolution land cover data have limited spatiotemporal availability.
Citation Information
Publication Year | 2025 |
---|---|
Title | An enhanced national-scale urban tree canopy cover dataset for the United States Data Release (2025) |
DOI | 10.5066/P13LECKC |
Authors | Lucila M Corro, Kenneth J Bagstad, Mehdi Pourpeikari Heris, Peter C Ibsen, Karen Schleeweis, James (Jay) E. Diffendorfer, Austin Troy, Kevin Megown, Jarlath O’Neil-Dunne |
Product Type | Data Release |
Record Source | USGS Asset Identifier Service (AIS) |
USGS Organization | Geosciences and Environmental Change Science Center |
Rights | This work is marked with CC0 1.0 Universal |
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An enhanced national-scale urban tree canopy cover dataset for the United States
Moderate-resolution (30-m) national map products have limited capacity to represent fine-scale, heterogeneous urban forms and processes, yet improvements from incorporating higher resolution predictor data remain rare. In this study, we applied random forest models to high-resolution land cover data for 71 U.S. urban areas, moderate-resolution National Land Cover Database (NLCD) Tree...
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An enhanced national-scale urban tree canopy cover dataset for the United States
Moderate-resolution (30-m) national map products have limited capacity to represent fine-scale, heterogeneous urban forms and processes, yet improvements from incorporating higher resolution predictor data remain rare. In this study, we applied random forest models to high-resolution land cover data for 71 U.S. urban areas, moderate-resolution National Land Cover Database (NLCD) Tree...
Authors
Lucila Marie Corro, Kenneth J. Bagstad, Mehdi Heris, Peter Christian Ibsen, Karen Schleeweis, James E. Diffendorfer, Austin Troy, Kevin Megown, Jarlath P.M. O'Neil-Dunne
Kenneth J. Bagstad, Ph.D.
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Jay Diffendorfer
Research Ecologist
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