Forest canopy height estimation from satellite RGB imagery using large-scale airborne LiDAR-derived training data and monocular depth estimation
Yongkang Lai, Xihan Mu, Dasheng Fan, Donghui Xie, Shanxin Guo, Wenli Huang, Tianjie Zhao, Guangjian Yan

TL;DR
This study develops a monocular depth estimation model trained on airborne LiDAR data to accurately estimate forest canopy height from satellite RGB images, enabling scalable high-resolution forest mapping.
Contribution
It introduces Depth2CHM, a novel approach that leverages large-scale airborne LiDAR data to train a monocular depth model for continuous forest canopy height estimation from satellite imagery.
Findings
Depth2CHM accurately estimates canopy height with low bias and RMSE.
The model reduces errors compared to existing global CHM products.
It demonstrates scalability for high-resolution forest mapping.
Abstract
Large-scale, high-resolution forest canopy height mapping plays a crucial role in understanding regional and global carbon and water cycles. Spaceborne LiDAR missions, including the Ice, Cloud, and Land Elevation Satellite-2 (ICESat-2) and the Global Ecosystem Dynamics Investigation (GEDI), provide global observations of forest structure but are spatially sparse and subject to inherent uncertainties. In contrast, near-surface LiDAR platforms, such as airborne and unmanned aerial vehicle (UAV) LiDAR systems, offer much finer measurements of forest canopy structure, and a growing number of countries have made these datasets openly available. In this study, a state-of-the-art monocular depth estimation model, Depth Anything V2, was trained using approximately 16,000 km2 of canopy height models (CHMs) derived from publicly available airborne LiDAR point clouds and related products across…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Synthetic Aperture Radar (SAR) Applications and Techniques
