Authors
Zhanmang Liao, Albert IJM Van Dijk, Binbin He, Pablo Rozas Larraondo, Peter F Scarth
Publication date
2020/12/1
Journal
International Journal of Applied Earth Observation and Geoinformation
Volume
93
Pages
102209
Publisher
Elsevier
Description
Detailed spatial information on the presence and properties of woody vegetation serves many purposes, including carbon accounting, environmental reporting and land management. Here, we investigated whether machine learning can be used to combine multiple spatial observations and training data to estimate woody vegetation canopy cover fraction (‘cover’), vegetation height (‘height’) and woody above-ground biomass dry matter (‘biomass’) at 25-m resolution across the Australian continent, where possible on an annual basis. We trained a Random Forest algorithm on cover and height estimates derived from airborne LiDAR over 11 regions and inventory-based biomass estimates for many thousands of plots across Australia. As predictors, we used annual geomedian Landsat surface reflectance, ALOS/PALSAR L-band radar backscatter mosaics, spatial vegetation structure data derived primarily from …
Total citations
20192020202120222023202419111210
Scholar articles
Z Liao, AIJM Van Dijk, B He, PR Larraondo, PF Scarth - International Journal of Applied Earth Observation and …, 2020