Forest aboveground biomass estimation using GEDI and earth observation data through attention-based deep learning
Wenquan Dong, Edward T.A. Mitchard, Hao Yu, Steven Hancock, Casey M., Ryan

TL;DR
This paper introduces an attention-based deep learning model for estimating forest aboveground biomass using multiple earth observation datasets, demonstrating improved accuracy and spatial detail over traditional methods.
Contribution
The study presents a novel attention UNet deep learning approach that outperforms conventional random forest algorithms in forest biomass estimation from EO data.
Findings
AU model achieved R2 of 0.66, RMSE of 43.66 Mg ha-1
AU provided more accurate spatial biomass maps than RF
Deep learning approach is feasible for satellite-based biomass estimation
Abstract
Accurate quantification of forest aboveground biomass (AGB) is critical for understanding carbon accounting in the context of climate change. In this study, we presented a novel attention-based deep learning approach for forest AGB estimation, primarily utilizing openly accessible EO data, including: GEDI LiDAR data, C-band Sentinel-1 SAR data, ALOS-2 PALSAR-2 data, and Sentinel-2 multispectral data. The attention UNet (AU) model achieved markedly higher accuracy for biomass estimation compared to the conventional RF algorithm. Specifically, the AU model attained an R2 of 0.66, RMSE of 43.66 Mg ha-1, and bias of 0.14 Mg ha-1, while RF resulted in lower scores of R2 0.62, RMSE 45.87 Mg ha-1, and bias 1.09 Mg ha-1. However, the superiority of the deep learning approach was not uniformly observed across all tested models. ResNet101 only achieved an R2 of 0.50, an RMSE of 52.93 Mg ha-1, and…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Wildlife Ecology and Conservation
