rosikand / waterQualityMLLinks
💧 Inland water systems are essential to our environment because they are vital ecosystems that are bio-diverse. Thus, finding innovative ways to monitor water quality is vital. In this repository, I present various machine learning algorithms that takes in multispectral remote sensing data from the AquaSat data set as input to predict optically…
☆10Updated 5 years ago
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