Pyramid Attention Network for Image Restoration
Pyramid Attention Network for Image Restoration
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Author / Creator
Mei, Yiqun , Fan, Yuchen , Zhang, Yulun , Yu, Jiahui , Zhou, Yuqian , Liu, Ding , Fu, Yun , Huang, Thomas S. and Shi, Humphrey
Publisher
New York: Springer US
Journal title
Language
English
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Publisher
New York: Springer US
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Scope and Contents
Contents
Self-similarity refers to the image prior widely used in image restoration algorithms that small but similar patterns tend to occur at different locations and scales. However, recent advanced deep convolutional neural network-based methods for image restoration do not take full advantage of self-similarities by relying on self-attention neural modules that only process information at the same scale. To solve this problem, we present a novel Pyramid Attention module for image restoration, which captures long-range feature correspondences from a multi-scale feature pyramid. Inspired by the fact that corruptions, such as noise or compression artifacts, drop drastically at coarser image scales, our attention module is designed to be able to
borrow
clean signals from their “clean” correspondences at the coarser levels. The proposed pyramid attention module is a generic building block that can be flexibly integrated into various neural architectures. Its effectiveness is validated through extensive experiments on multiple image restoration tasks: image denoising, demosaicing, compression artifact reduction, and super resolution. Without any bells and whistles, our PANet (pyramid attention module with simple network backbones) can produce state-of-the-art results with superior accuracy and visual quality. Our code is available at
https://github.com/SHI-Labs/Pyramid-Attention-Networks...
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Full title
Pyramid Attention Network for Image Restoration
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Primary Identifiers
Record Identifier
TN_cdi_proquest_journals_2882796533
Permalink
https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_proquest_journals_2882796533
Other Identifiers
ISSN
0920-5691
E-ISSN
1573-1405
DOI
10.1007/s11263-023-01843-5