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Article

Reconstructing a Century of Urban Growth Through Deep Learning-Based Colorization and Segmentation of Historical Aerial and Satellite Imagery: Les Sables-d’Olonne, France (1920–2024)

1
UMR 6554 CNRS LETG (Littoral, Environnement, Teledetection, Geomatique), Institut de Geographie et d’Amenagement Regional de l’Universite de Nantes (IGARUN), Nantes Universite, Campus Tertre, BP 81227, 44312 Nantes Cedex 3, France
2
GEOPEN Laboratory, Earth Sciences Department, Faculty of Sciences-Ain Chock, University Hassan II, Casablanca 20000, Morocco
3
Research Group Landscape Planning, Department of Spatial Planning, TU Dortmund University, 44221 Dortmund, Germany
*
Author to whom correspondence should be addressed.
Remote Sens. 2026, 18(10), 1517; https://doi.org/10.3390/rs18101517
Submission received: 18 February 2026 / Revised: 29 April 2026 / Accepted: 7 May 2026 / Published: 11 May 2026
(This article belongs to the Section Remote Sensing Image Processing)

Abstract

Coastal urbanization is increasingly constrained by legacy land-use patterns and escalating climate risks, yet long-term morphological trajectories remain poorly quantified due to the absence of multispectral data in pre-satellite archives. This study introduces a scalable deep learning pipeline that bridges a century-scale domain gap through an attention-enhanced Pix2Pix colorization stage and a few-shot U-Net++ segmentation stage, enabling automated reconstruction of urban expansion from panchromatic historical aerial imagery (1920–1971) and digital aerial photographs (1997) to contemporary very-high-resolution satellite data (2024) in Les Sables-d'Olonne, France. The novelty of the approach lies in coupling generative colorization with epoch-specific fine-tuning to overcome radiometric and annotation bottlenecks that have historically prevented quantitative urban reconstruction from pre-satellite archives. The colorization stage achieved high spectral fidelity (PSNR 35.21 dB, SSIM 0.9762), and segmentation performed strongly on modern imagery (mIoU 0.9789). While the segmentation model performed strongly on modern imagery, direct transfer to historical data exhibited substantial domain shift due to radiometric discrepancies. Few-shot adaptation on year-specific calibration sets recovered reliable building footprints (mIoU 0.53–0.65) across the full timeline. Multi-scalar analysis of the reconstructed footprints revealed constrained anisotropic expansion: early saturation of the coastal historic core, followed by rapid inland peri-urbanization post-1971 driven by geographic barriers. This spatiotemporal shift has entrenched spatial lock-in, placing recent development in retro-littoral zones that are vulnerable to submersion and characterized by severe vegetation loss. The framework unlocks previously inaccessible historical archives for quantitative urban monitoring, providing critical insights into legacy effects of unconstrained growth and informing resilient coastal planning under climate change.
Keywords: historical aerial imagery; urban morphology; historical image colorization; semantic segmentation; generative adversarial networks; domain adaptation; few-shot learning; coastal urbanization; climate vulnerability; century-scale analysis historical aerial imagery; urban morphology; historical image colorization; semantic segmentation; generative adversarial networks; domain adaptation; few-shot learning; coastal urbanization; climate vulnerability; century-scale analysis

Share and Cite

MDPI and ACS Style

Simou, M.R.; Maanan, M.; Hammadi, A.; Benayad, M.; Rhinane, H.; Maanan, M. Reconstructing a Century of Urban Growth Through Deep Learning-Based Colorization and Segmentation of Historical Aerial and Satellite Imagery: Les Sables-d’Olonne, France (1920–2024). Remote Sens. 2026, 18, 1517. https://doi.org/10.3390/rs18101517

AMA Style

Simou MR, Maanan M, Hammadi A, Benayad M, Rhinane H, Maanan M. Reconstructing a Century of Urban Growth Through Deep Learning-Based Colorization and Segmentation of Historical Aerial and Satellite Imagery: Les Sables-d’Olonne, France (1920–2024). Remote Sensing. 2026; 18(10):1517. https://doi.org/10.3390/rs18101517

Chicago/Turabian Style

Simou, Mohamed Rabii, Mohamed Maanan, Ayoub Hammadi, Mohamed Benayad, Hassan Rhinane, and Mehdi Maanan. 2026. "Reconstructing a Century of Urban Growth Through Deep Learning-Based Colorization and Segmentation of Historical Aerial and Satellite Imagery: Les Sables-d’Olonne, France (1920–2024)" Remote Sensing 18, no. 10: 1517. https://doi.org/10.3390/rs18101517

APA Style

Simou, M. R., Maanan, M., Hammadi, A., Benayad, M., Rhinane, H., & Maanan, M. (2026). Reconstructing a Century of Urban Growth Through Deep Learning-Based Colorization and Segmentation of Historical Aerial and Satellite Imagery: Les Sables-d’Olonne, France (1920–2024). Remote Sensing, 18(10), 1517. https://doi.org/10.3390/rs18101517

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