2022
DOI: 10.1111/cgf.14680
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Learning Multi‐Scale Deep Image Prior for High‐Quality Unsupervised Image Denoising

Abstract: Recent methods on image denoising have achieved remarkable progress, benefiting mostly from supervised learning on massive noisy/clean image pairs and unsupervised learning on external noisy images. However, due to the domain gap between the training and testing images, these methods typically have limited applicability on unseen images. Although several attempts have been made to avoid the domain gap issue by learning denoising from singe noisy image itself, they are less effective in handling real‐world nois… Show more

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