First Mapping the Canopy Height of Primeval Forests in the Tallest Tree Area of Asia
Guangpeng Fan, Fei Yan, Xiangquan Zeng, Qingtao Xu, Ruoyoulan Wang,, Binghong Zhang, Jialing Zhou, Liangliang Nan, Jinhu Wang, Zhiwei Zhang, Jia, Wang

TL;DR
This study developed the first high-resolution canopy height map of primeval forests in Asia's tallest tree area using advanced satellite data and deep learning, aiding conservation and discovery of giant trees.
Contribution
Introduced a novel deep learning method with a customized CNN architecture for mapping primeval forest canopy height using satellite LiDAR and optical imagery.
Findings
Mapped the distribution of giant trees in Yarlung Tsangpo Grand Canyon.
Discovered two previously unknown giant tree communities.
Validated the canopy height map with multiple data sources.
Abstract
We have developed the world's first canopy height map of the distribution area of world-level giant trees. This mapping is crucial for discovering more individual and community world-level giant trees, and for analyzing and quantifying the effectiveness of biodiversity conservation measures in the Yarlung Tsangpo Grand Canyon (YTGC) National Nature Reserve. We proposed a method to map the canopy height of the primeval forest within the world-level giant tree distribution area by using a spaceborne LiDAR fusion satellite imagery (Global Ecosystem Dynamics Investigation (GEDI), ICESat-2, and Sentinel-2) driven deep learning modeling. And we customized a pyramid receptive fields depth separable CNN (PRFXception). PRFXception, a CNN architecture specifically customized for mapping primeval forest canopy height to infer the canopy height at the footprint level of GEDI and ICESat-2 from…
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Taxonomy
TopicsForest ecology and management
MethodsMasked autoencoder
