An enhanced national-scale urban tree canopy cover dataset for the United States Data Release (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 |