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Unsupervised multimodal thick cloud removal for optical remote sensing images via adversarial learning

  • Qizhuo Han
  • , Bo Huang
  • , Ying Li
  • , Changjing Shang
  • , Qiang Shen
  • Northwestern Polytechnical University Xian
  • Aberystwyth University

科研成果: 期刊稿件文章同行评审

摘要

Cloud contamination is a common degradation in optical remote sensing images, adversely affecting the application of such images. Deep-learning-based cloud removal algorithms with auxiliary information have received increasing attention in recent years. Most of these methods rely on georeferenced, cloud-free optical images from other periods as references. However, the inherent gap between the reference and the target images often leads to inaccurate reconstruction. Unsupervised methods have also been proposed, mitigating the gap issue by eliminating the need for reference images. Yet, they typically and solely rely on reconstruction loss during training, often resulting in unnatural outcomes. To tackle these limitations, we propose ALM-CR (Adversarial Learning–based Multimodal Cloud Removal), an unsupervised two-stage framework that leverages synthetic aperture radar (SAR) as auxiliary input. The first stage performs SAR-to-optical translation for structural and approximate spectral recovery, followed by SAR-optical fusion to restore fine-grained spectral details. The proposed adversarial learning strategy removes the need for temporal reference images, enabling precise reconstruction of cloud-covered images while preventing overfitting. Experimental results demonstrate that our method surpasses existing unsupervised methods on both reference and no-reference metrics, and reconstructs spectral information more consistently than supervised methods.

源语言英语
页(从-至)1336-1347
页数12
期刊Remote Sensing Letters
16
12
DOI
出版状态已出版 - 2025

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