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DCAF-GAN: Enhancing historical landscape restoration with dual-branch feature extraction and attention fusion

Author

Listed:
  • Li Fang
  • Bo Han
  • Mingyan Bi
  • Lihui Wang
  • Dandan Wang

Abstract

Historical landscape restoration has become a crucial area of research in cultural heritage preservation, and with the advancement of digital technologies, effectively restoring damaged historical images has become a critical challenge. Traditional restoration methods face difficulties in handling large occlusions, complex structural features, and maintaining high fidelity in restored images. Existing deep learning methods often focus on restoring a single feature, making it difficult to achieve high-quality reconstruction of both texture and structure. To address these challenges, we propose DCAF-GAN, a novel deep learning model that effectively restores both fine textures and global structures in damaged historical landscapes through a dual-branch encoder and a channel attention-guided fusion module. Experimental results show that DCAF-GAN achieves a PSNR of 29.12 and SSIM of 0.867 on the StreetView dataset, and a PSNR of 28.6 and SSIM of 0.854 on the Places2 dataset, significantly outperforming other models. These results demonstrate that DCAF-GAN not only provides high-quality restorations but also maintains computational efficiency. DCAF-GAN offers a promising solution for the digital preservation and restoration of cultural heritage, with significant potential for further applications.

Suggested Citation

  • Li Fang & Bo Han & Mingyan Bi & Lihui Wang & Dandan Wang, 2025. "DCAF-GAN: Enhancing historical landscape restoration with dual-branch feature extraction and attention fusion," PLOS ONE, Public Library of Science, vol. 20(10), pages 1-27, October.
  • Handle: RePEc:plo:pone00:0334532
    DOI: 10.1371/journal.pone.0334532
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    References listed on IDEAS

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    1. Théo Martinez & Adam Hammoumi & Gabriel Ducret & Maxime Moreaud & Rémy Deschamps & Hervé Piegay & Jean-François Berger, 2023. "Deep learning ancient map segmentation to assess historical landscape changes," Journal of Maps, Taylor & Francis Journals, vol. 19(1), pages 2225071-222, December.
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