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FLAIR #1: semantic segmentation and domain adaptation dataset

Deep learning methods are used for land-cover semantic segmentation of aerial images, addressing challenges in providing uniform, reliable, and accurate results over heterogeneous French territories.

Year
2022
Venue
arXiv 2022
Authors
5
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arxiv.org/abs/2211.12979v5ARXIV-DEFAULT
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Abstract

The French National Institute of Geographical and Forest Information (IGN) has the mission to document and measure land-cover on French territory and provides referential geographical datasets, including high-resolution aerial images and topographic maps. The monitoring of land-cover plays a crucial role in land management and planning initiatives, which can have significant socio-economic and environmental impact. Together with remote sensing technologies, artificial intelligence (IA) promises to become a powerful tool in determining land-cover and its evolution. IGN is currently exploring the potential of IA in the production of high-resolution land cover maps. Notably, deep learning methods are employed to obtain a semantic segmentation of aerial images. However, territories as large as France imply heterogeneous contexts: variations in landscapes and image acquisition make it challenging to provide uniform, reliable and accurate results across all of France. The FLAIR-one dataset presented is part of the dataset currently used at IGN to establish the French national reference land cover map "Occupation du sol `a grande 'echelle" (OCS- GE).

Authors

5