HSG-AIML/ben-ge
Official repository of the ben-ge Earth Observation dataset
This dataset extends existing Earth observation data by adding geographical and environmental context for over half a million locations across Europe. It combines satellite imagery (Sentinel-1 and -2) with elevation, land-use, climate, and seasonal information. Earth observation scientists, remote sensing analysts, and environmental researchers can use this to develop advanced models for tasks like land classification, environmental monitoring, or climate impact assessment.
No commits in the last 6 months.
Use this if you need a comprehensive, multimodal Earth observation dataset to train or pretrain machine learning models for environmental analysis and land monitoring.
Not ideal if you only need raw satellite imagery without additional environmental or geographical context, or if your region of interest is outside Europe.
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GPL-3.0
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Last pushed
Dec 22, 2023
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