deepVector/geospatial-machine-learning
A curated list of resources focused on Machine Learning in Geospatial Data Science.
This is a curated collection of resources for geospatial data scientists and GIS professionals who want to apply machine learning to satellite imagery and other spatial data. It provides links to code projects, datasets, research papers, books, and courses. Users can find practical examples and foundational knowledge for tasks like land cover classification, object detection, and change detection using satellite and aerial images.
695 stars. No commits in the last 6 months.
Use this if you are a geospatial data scientist, GIS professional, or researcher looking for a comprehensive list of resources to apply machine learning techniques to geospatial data.
Not ideal if you are looking for a ready-to-use software tool or library rather than a collection of learning and project resources.
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Jun 21, 2018
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