AUTHOR=Vogeler Jody C. , Fekety Patrick A. , Elliott Lisa , Swayze Neal C. , Filippelli Steven K. , Barry Brent , Holbrook Joseph D. , Vierling Kerri T. TITLE=Evaluating GEDI data fusions for continuous characterizations of forest wildlife habitat JOURNAL=Frontiers in Remote Sensing VOLUME=4 YEAR=2023 URL=https://www.frontiersin.org/journals/remote-sensing/articles/10.3389/frsen.2023.1196554 DOI=10.3389/frsen.2023.1196554 ISSN=2673-6187 ABSTRACT=
Continuous characterizations of forest structure are critical for modeling wildlife habitat as well as for assessing trade-offs with additional ecosystem services. To overcome the spatial and temporal limitations of airborne lidar data for studying wide-ranging animals and for monitoring wildlife habitat through time, novel sampling data sources, including the space-borne Global Ecosystem Dynamics Investigation (GEDI) lidar instrument, may be incorporated within data fusion frameworks to scale up satellite-based estimates of forest structure across continuous spatial extents. The objectives of this study were to: 1) investigate the value and limitations of satellite data sources for generating GEDI-fusion models and 30 m resolution predictive maps of eight forest structure measures across six western U.S. states (Colorado, Wyoming, Idaho, Oregon, Washington, and Montana); 2) evaluate the suitability of GEDI as a reference data source and assess any spatiotemporal biases of GEDI-fusion maps using samples of airborne lidar data; and 3) examine differences in GEDI-fusion products for inclusion within wildlife habitat models for three keystone woodpecker species with varying forest structure needs. We focused on two fusion models, one that combined Landsat, Sentinel-1 Synthetic Aperture Radar, disturbance, topographic, and bioclimatic predictor information (combined model), and one that was restricted to Landsat, topographic, and bioclimatic predictors (Landsat/topo/bio model). Model performance varied across the eight GEDI structure measures although all representing moderate to high predictive performance (model testing