2024
DOI: 10.3389/frsen.2024.1484900
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Canopy height mapping in French Guiana using multi-source satellite data and environmental information in a U-Net architecture

Kamel Lahssini,
Nicolas Baghdadi,
Guerric le Maire
et al.

Abstract: Canopy height is a key indicator of tropical forest structure. In this study, we present a deep learning application to map canopy height in French Guiana using freely available multi-source satellite data (optical and radar) and complementary environmental information. The potential of a U-Net architecture trained on sparse and unevenly distributed GEDI data to generate a continuous canopy height map at a regional scale was assessed. The developed model, named CHNET, successfully produced a canopy height map … Show more

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