Dogiye12 / Wetland-Classification-Using-GEE-and-CNNsLinks
Wetland Classification Using GEE and CNNs employs synthetic spectral and index features to classify land into water, wetland, and upland. It demonstrates how remote sensing data and deep learning can be combined for environmental monitoring and serves as a benchmark workflow without real satellite data.
☆14Updated 3 months ago
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