AI RESEARCH
Mapping Historic Urban Footprints in France: Balancing Quality, Scalability and AI Techniques
arXiv CS.CV
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ArXi:2510.02097v2 Announce Type: replace Quantitative analysis of historical urban sprawl in France before the 1970s is hindered by the lack of nationwide digital urban footprint data. This study bridges this gap by developing a scalable deep learning pipeline to extract urban areas from the Scan Histo historical map series (1925-1950), which produces the first open-access, national-scale urban footprint dataset for this pivotal period. Our key innovation is a dual-pass U-Net approach designed to handle the high radiometric and stylistic complexity of historical maps.