Lake Detection and Water Quality Estimation in Sentinel-2 Data
Researchers have developed and compared three machine learning models for identifying and monitoring surface water bodies, evaluating their performance against traditional NDWI thresholding methods. The study also introduces novel color mapping techniques for spectral water indices to improve the clarity and interpretability of water quality data for environmental applications. This work aims to provide more reliable and automated tools for managing inland water resources amidst climate change and human pressures. AI
IMPACT Provides advanced machine learning tools for environmental monitoring, potentially improving water resource management and climate change impact assessment.