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Land_Cover_Classification

This project was done for a Aggregate Intellect workshop on Earth & Environmental Data Science and in collaboration with Fynn Davis.

About the Project

This project focuses on using machine learning to classify NRCAN 2015 Canada land cover using Sentinel-2 data.

This repo contains all the base testing including:

  • Pipeline comparisons
    • Different models
    • Different extents
    • Optimization
    • Feature Importance
  • Calculated Layers
  • Normalization Techniques

Fynn Davis's repo contains:

  • Prediction Maps
  • Feature Selection from the image
    • Filtering
    • K-means clustering
    • Edge Detection
    • Geocoordinates
  • Overlapping Model Predictions