BzGEO/Geo_AI_compendium
References regarding geospatial artificial intelligence (#geoAI) and geospatial machine learning (#geoML)
This compendium helps geospatial practitioners understand and implement machine learning techniques for land cover monitoring. It provides a curated collection of resources, tutorials, and insights into applying different classification algorithms to satellite and aerial imagery using popular GIS software and cloud platforms. Geographers, environmental scientists, urban planners, and anyone analyzing changes in land use will find this useful.
Use this if you need to perform land cover classification or change detection using geospatial imagery and want to explore various machine learning methods and software implementations.
Not ideal if you are looking for a ready-to-use software solution or a comprehensive guide to deep learning model development from scratch.
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Mar 10, 2026
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