adodangeh/CloudPee-Net
A robust encoder-decoder architecture for cloud detection from satellite remote sensing images
This helps with accurately identifying and mapping cloud cover in satellite images, which is a crucial first step for many remote sensing applications. You provide satellite imagery, and it produces a clear, efficient map highlighting cloud-free areas. This is for scientists, environmental researchers, or land-use planners who work with satellite data.
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Use this if you need to precisely remove cloud obstructions from satellite images to get a clearer view of the Earth's surface for analysis.
Not ideal if your primary need is general image classification or object detection not specifically focused on cloud cover in satellite imagery.
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Last pushed
Aug 04, 2021
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