Individual canopy tree species maps for the National Ecological Observatory Network

PLoS Biol. 2024 Jul 16;22(7):e3002700. doi: 10.1371/journal.pbio.3002700. eCollection 2024 Jul.

Abstract

The ecology of forest ecosystems depends on the composition of trees. Capturing fine-grained information on individual trees at broad scales provides a unique perspective on forest ecosystems, forest restoration, and responses to disturbance. Individual tree data at wide extents promises to increase the scale of forest analysis, biogeographic research, and ecosystem monitoring without losing details on individual species composition and abundance. Computer vision using deep neural networks can convert raw sensor data into predictions of individual canopy tree species through labeled data collected by field researchers. Using over 40,000 individual tree stems as training data, we create landscape-level species predictions for over 100 million individual trees across 24 sites in the National Ecological Observatory Network (NEON). Using hierarchical multi-temporal models fine-tuned for each geographic area, we produce open-source data available as 1 km2 shapefiles with individual tree species prediction, as well as crown location, crown area, and height of 81 canopy tree species. Site-specific models had an average performance of 79% accuracy covering an average of 6 species per site, ranging from 3 to 15 species per site. All predictions are openly archived and have been uploaded to Google Earth Engine to benefit the ecology community and overlay with other remote sensing assets. We outline the potential utility and limitations of these data in ecology and computer vision research, as well as strategies for improving predictions using targeted data sampling.

MeSH terms

  • Ecology / methods
  • Ecosystem*
  • Forests*
  • Neural Networks, Computer
  • Trees*

Grants and funding

This research was supported by the Gordon and Betty Moore Foundation’s Data-Driven Discovery Initiative (GBMF4563) to EPW, by the USDA National Institute of Food and Agriculture McIntire Stennis project 1024612 and the Forest Systems Jumpstart program administered by the Florida Agricultural Experiment Station to SAB, and by the National Science Foundation (1926542) to EPW, SAB, AZ, DZW, and AS. This work was supported by the USDA National Institute of Food and Agriculture, Hatch project FLA-WEC-005944. PT acknowledges funding support from NSF Macrosystems Biology and NEON-Enabled Science (MSB-NES) award DEB 1638720 and NSF ASCEND Biology Integration Institute (BII) through DBI award 2021898. SR acknowledges funding support from NASA award 80NSSC23K0421 P00001 and Hatch project number ME022425. NGS and VER were supported by funding from NASA (80NSSC22K1625) and NSF Dimensions of Biodiversity (DEB-2124466). RAA was supported by the NWT LTER (NSF DEB-2224439), USDA NIFA McIntire Stennis project (1019284), and USDA NIFA postdoctoral award (2022-67012-37200). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.