Apiquet/segmentation_from_satellite_images
This repository shows how to get satellite images to build a dataset to train a neural network. It use the MiniFrance land cover dataset, Google-Earth-Engine to download satellite images, and Pytorch to train a neural network.
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Feb 24, 2024
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