kamalesh003/Oil-Spill-Detection-Using-U-Nets
This project uses a U-Net deep learning model to detect oil spills from satellite images. With an encoder–decoder CNN and image preprocessing, it precisely segments spill regions. The system automates detection, reducing analysis time, enhancing accuracy, and aiding quick environmental response.
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Jupyter Notebook
License
MIT
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Last pushed
Oct 16, 2025
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