Akajiaku1 / -Coastal-Erosion-Detection-with-Satellite-Imagery
A lightweight geospatial workflow for detecting shoreline changes using Sentinel-2 imagery, NDWI, and Google Earth Engine (GEE). It quantifies erosion and accretion between two time periods, and exports area statistics in CSV format.
☆44Updated this week
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