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Main Authors: Rabehi, Walid, Texier, Marion Le, Lemoy, Rémi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.02097
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author Rabehi, Walid
Texier, Marion Le
Lemoy, Rémi
author_facet Rabehi, Walid
Texier, Marion Le
Lemoy, Rémi
contents 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. The first pass, trained on an initial dataset, generates a preliminary map that identifies areas of confusion, such as text and roads, to guide targeted data augmentation. The second pass uses a refined dataset and the binarized output of the first model to minimize radiometric noise, which significantly reduces false positives. Deployed on a high-performance computing cluster, our method processes 941 high-resolution tiles covering the entirety of metropolitan France. The final mosaic achieves an overall accuracy of 73%, effectively capturing diverse urban patterns while overcoming common artifacts like labels and contour lines. We openly release the code, training datasets, and the resulting nationwide urban raster to support future research in long-term urbanization dynamics.
format Preprint
id arxiv_https___arxiv_org_abs_2510_02097
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mapping Historic Urban Footprints in France: Balancing Quality, Scalability and AI Techniques
Rabehi, Walid
Texier, Marion Le
Lemoy, Rémi
Computer Vision and Pattern Recognition
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. The first pass, trained on an initial dataset, generates a preliminary map that identifies areas of confusion, such as text and roads, to guide targeted data augmentation. The second pass uses a refined dataset and the binarized output of the first model to minimize radiometric noise, which significantly reduces false positives. Deployed on a high-performance computing cluster, our method processes 941 high-resolution tiles covering the entirety of metropolitan France. The final mosaic achieves an overall accuracy of 73%, effectively capturing diverse urban patterns while overcoming common artifacts like labels and contour lines. We openly release the code, training datasets, and the resulting nationwide urban raster to support future research in long-term urbanization dynamics.
title Mapping Historic Urban Footprints in France: Balancing Quality, Scalability and AI Techniques
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.02097