global-canopy-height-model
canopy model
Develops a high-resolution canopy height model to estimate canopy top height anywhere on Earth
This repository contains the code used in the paper: A high-resolution canopy height model of the Earth. Here, we developed a model to estimate canopy top height anywhere on Earth. The model estimates canopy top height for every Sentinel-2 image pixel and was trained using sparse GEDI LIDAR data as a reference.
145 stars
3 watching
29 forks
Language: Python
last commit: over 1 year ago
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canopy-height-modelsdeep-learningensemblegedisentinel-2uncertainty
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