IGNF/FLAIR-HUB
UperFuse code for the FLAIR-HUB dataset
This project helps environmental scientists, urban planners, and agricultural specialists create highly detailed land cover maps. By inputting various Earth observation data like aerial and satellite imagery, alongside topographic information, it outputs precise classifications of land features. This is for professionals who need to accurately identify and delineate different types of terrain, vegetation, or urban areas over large geographical regions.
Use this if you need to perform advanced semantic segmentation and land cover mapping using diverse, high-resolution Earth observation imagery across large areas of France.
Not ideal if your project requires land cover analysis outside of France or if you need to process data from different sensor types not included in the dataset.
Stars
44
Forks
3
Language
Python
License
Apache-2.0
Category
Last pushed
Feb 03, 2026
Commits (30d)
0
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