climatechange-ai-tutorials / lulc-classificationLinks
Mapping the extent of land use and land cover categories over time is essential for better environmental monitoring, urban planning and nature protection. Train and fine-tune a deep learning model to classify satellite images into 10 LULC categories.
☆25Updated last year
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