Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)

Access to very high-resolution (HR) satellite imagery is often limited, delayed, or cost-prohibitive, restricting accurate and timely post-disaster damage detection and recovery monitoring (PDDRM). Additionally, class imbalance in disaster classification datasets further complicates deep learning (D...

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Main Authors: U. Lagap, S. Ghaffarian
Format: Article
Language:English
Published: Copernicus Publications 2025-07-01
Series:The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://isprs-archives.copernicus.org/articles/XLVIII-G-2025/853/2025/isprs-archives-XLVIII-G-2025-853-2025.pdf
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author U. Lagap
S. Ghaffarian
author_facet U. Lagap
S. Ghaffarian
author_sort U. Lagap
collection DOAJ
description Access to very high-resolution (HR) satellite imagery is often limited, delayed, or cost-prohibitive, restricting accurate and timely post-disaster damage detection and recovery monitoring (PDDRM). Additionally, class imbalance in disaster classification datasets further complicates deep learning (DL)-based assessments. This study addresses these challenges by leveraging ESRGAN to enhance low-resolution (LR) satellite imagery, thereby improving damage classification accuracy and the ability to monitor post-disaster recovery over time with three state-of-the-art DL models: Vision Transformer (ViT), ConvNeXt, and MaxViT for PDDRM classification across four key recovery states: Not Damaged, Not Recovered, Recovered, and New Buildings. To generate super-resolution (SR) images, LR images were first paired with HR images to train ESRGAN. Numerical evaluations using Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index Measure (SSIM) between SR and HR images confirm that ESRGAN effectively reconstructs high-resolution features, with Not Damaged (PSNR: 29.2, SSIM: 0.78) and New Buildings (PSNR: 30.3, SSIM: 0.81) exhibiting the highest reconstruction quality. ESRGAN-generated SR images were then compared against LR images in terms of classification accuracy and reliability. The results demonstrate that SR improves classification accuracy and precision, particularly for ViT and ConvNeXt, with ViT achieving an accuracy of 84% and ConvNeXt 82% on SR images, compared to 79% and 78% on LR images. We also employed Grad-CAM++ visualizations to interpret model predictions, which highlighted reliability improvements in certain classes. This study demonstrates that SR is a scalable and cost-effective alternative to very high-resolution satellite imagery, reducing dependency on expensive data sources while improving classification accuracy for PDDRM.
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spelling doaj-art-4ce32179db6e4bcda72fb59c861359e02025-08-20T03:58:45ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342025-07-01XLVIII-G-202585386010.5194/isprs-archives-XLVIII-G-2025-853-2025Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)U. Lagap0S. Ghaffarian1Department of Risk and Disaster Reduction, University College London (UCL), Gower Street, London, WC1E 6BT, UKDepartment of Risk and Disaster Reduction, University College London (UCL), Gower Street, London, WC1E 6BT, UKAccess to very high-resolution (HR) satellite imagery is often limited, delayed, or cost-prohibitive, restricting accurate and timely post-disaster damage detection and recovery monitoring (PDDRM). Additionally, class imbalance in disaster classification datasets further complicates deep learning (DL)-based assessments. This study addresses these challenges by leveraging ESRGAN to enhance low-resolution (LR) satellite imagery, thereby improving damage classification accuracy and the ability to monitor post-disaster recovery over time with three state-of-the-art DL models: Vision Transformer (ViT), ConvNeXt, and MaxViT for PDDRM classification across four key recovery states: Not Damaged, Not Recovered, Recovered, and New Buildings. To generate super-resolution (SR) images, LR images were first paired with HR images to train ESRGAN. Numerical evaluations using Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index Measure (SSIM) between SR and HR images confirm that ESRGAN effectively reconstructs high-resolution features, with Not Damaged (PSNR: 29.2, SSIM: 0.78) and New Buildings (PSNR: 30.3, SSIM: 0.81) exhibiting the highest reconstruction quality. ESRGAN-generated SR images were then compared against LR images in terms of classification accuracy and reliability. The results demonstrate that SR improves classification accuracy and precision, particularly for ViT and ConvNeXt, with ViT achieving an accuracy of 84% and ConvNeXt 82% on SR images, compared to 79% and 78% on LR images. We also employed Grad-CAM++ visualizations to interpret model predictions, which highlighted reliability improvements in certain classes. This study demonstrates that SR is a scalable and cost-effective alternative to very high-resolution satellite imagery, reducing dependency on expensive data sources while improving classification accuracy for PDDRM.https://isprs-archives.copernicus.org/articles/XLVIII-G-2025/853/2025/isprs-archives-XLVIII-G-2025-853-2025.pdf
spellingShingle U. Lagap
S. Ghaffarian
Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
title Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
title_full Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
title_fullStr Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
title_full_unstemmed Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
title_short Enhancing Post-Disaster Damage Detection and Recovery Monitoring by Addressing Class Imbalance in Satellite Imagery Using Enhanced Super-Resolution GANs (ESRGAN)
title_sort enhancing post disaster damage detection and recovery monitoring by addressing class imbalance in satellite imagery using enhanced super resolution gans esrgan
url https://isprs-archives.copernicus.org/articles/XLVIII-G-2025/853/2025/isprs-archives-XLVIII-G-2025-853-2025.pdf
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AT sghaffarian enhancingpostdisasterdamagedetectionandrecoverymonitoringbyaddressingclassimbalanceinsatelliteimageryusingenhancedsuperresolutiongansesrgan