saraivaufc/super-resolution-using-gans
Super-Resolution of Sentinel-2 Using Generative Adversarial Networks
This helps remote sensing analysts and environmental researchers enhance low-resolution satellite images. It takes standard low-resolution Sentinel-2 satellite imagery and outputs clearer, higher-resolution versions, revealing finer details for better analysis. Ideal for professionals working with satellite data to monitor changes or conduct surveys.
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Use this if you need to improve the visual quality and detail of Sentinel-2 satellite images for environmental monitoring, urban planning, or agricultural assessment.
Not ideal if you need to process satellite imagery from sources other than Sentinel-2 or require extremely precise quantitative data instead of visual enhancement.
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Last pushed
Mar 31, 2024
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