Multimodal deep learning for mapping forest dominant height by fusing GEDI with earth observation data
Man Chen, Wenquan Dong, Hao Yu, Iain Woodhouse, Casey M. Ryan, Haoyu, Liu, Selena Georgiou, Edward T.A. Mitchard

TL;DR
This paper introduces MARSNet, a multimodal deep learning framework that fuses GEDI, SAR, and optical data to improve high-resolution forest dominant height mapping, outperforming traditional methods.
Contribution
The study presents a novel multi-modal attention remote sensing network (MARSNet) that effectively integrates diverse remote sensing data for accurate forest height estimation.
Findings
MARSNet achieved an R2 of 0.62 and RMSE of 2.82 m, outperforming random forest.
Wall-to-wall forest height maps at 10 m resolution were successfully generated.
Validation showed MARSNet's superior accuracy over baseline models.
Abstract
The integration of multisource remote sensing data and deep learning models offers new possibilities for accurately mapping high spatial resolution forest height. We found that GEDI relative heights (RH) metrics exhibited strong correlation with the mean of the top 10 highest trees (dominant height) measured in situ at the corresponding footprint locations. Consequently, we proposed a novel deep learning framework termed the multi-modal attention remote sensing network (MARSNet) to estimate forest dominant height by extrapolating dominant height derived from GEDI, using Setinel-1 data, ALOS-2 PALSAR-2 data, Sentinel-2 optical data and ancillary data. MARSNet comprises separate encoders for each remote sensing data modality to extract multi-scale features, and a shared decoder to fuse the features and estimate height. Using individual encoders for each remote sensing imagery avoids…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Forest ecology and management
MethodsFocus · Convolution
