iamtekson/DL-for-LULC-prediction
This is the ResNet50 implementation of the Eurosat dataset.
This project helps you classify satellite images to understand land use and land cover. You input raw satellite imagery, and it outputs a predicted map identifying different types of land like forests, cities, or agricultural areas. This is useful for environmental scientists, urban planners, or geographers.
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Use this if you need to automatically categorize different types of land from satellite photos for environmental monitoring or urban planning.
Not ideal if you need to analyze highly specialized features beyond general land cover, or if you require real-time mapping updates.
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Aug 31, 2021
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