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Papers/DiffCR: A Fast Conditional Diffusion Framework for Cloud R...

DiffCR: A Fast Conditional Diffusion Framework for Cloud Removal from Optical Satellite Images

Xuechao Zou, Kai Li, Junliang Xing, Yu Zhang, Shiying Wang, Lei Jin, Pin Tao

2023-08-08Cloud RemovalImage Generation
PaperPDFCode(official)

Abstract

Optical satellite images are a critical data source; however, cloud cover often compromises their quality, hindering image applications and analysis. Consequently, effectively removing clouds from optical satellite images has emerged as a prominent research direction. While recent advancements in cloud removal primarily rely on generative adversarial networks, which may yield suboptimal image quality, diffusion models have demonstrated remarkable success in diverse image-generation tasks, showcasing their potential in addressing this challenge. This paper presents a novel framework called DiffCR, which leverages conditional guided diffusion with deep convolutional networks for high-performance cloud removal for optical satellite imagery. Specifically, we introduce a decoupled encoder for conditional image feature extraction, providing a robust color representation to ensure the close similarity of appearance information between the conditional input and the synthesized output. Moreover, we propose a novel and efficient time and condition fusion block within the cloud removal model to accurately simulate the correspondence between the appearance in the conditional image and the target image at a low computational cost. Extensive experimental evaluations on two commonly used benchmark datasets demonstrate that DiffCR consistently achieves state-of-the-art performance on all metrics, with parameter and computational complexities amounting to only 5.1% and 5.4%, respectively, of those previous best methods. The source code, pre-trained models, and all the experimental results will be publicly available at https://github.com/XavierJiezou/DiffCR upon the paper's acceptance of this work.

Results

TaskDatasetMetricValueModel
Image GenerationSEN12MS-CRMAE0.019DiffCR
Image GenerationSEN12MS-CRPSNR31.77DiffCR
Image GenerationSEN12MS-CRSAM5.821DiffCR
Image GenerationSEN12MS-CRSSIM0.902DiffCR
Image InpaintingSEN12MS-CRMAE0.019DiffCR
Image InpaintingSEN12MS-CRPSNR31.77DiffCR
Image InpaintingSEN12MS-CRSAM5.821DiffCR
Image InpaintingSEN12MS-CRSSIM0.902DiffCR

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