揭示单像超分辨率中非局部注意力的阴暗面

Jian-Nan Su;Guodong Fan;Min Gan;Guang-Yong Chen;Wenzhong Guo;C. L. Philip Chen
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摘要

单图像超分辨率(SISR)旨在从相应的低分辨率输入图像重建高分辨率图像。提高重建质量的常用技术是非局部关注(NLA),它利用图像中的自相似纹理模式。然而,我们发现了一项新发现,对流行的观点提出了挑战。我们的研究发现,NLA 可能对 SISR 不利,甚至会产生严重失真的纹理。例如,在处理严重退化的纹理时,由于非局部纹理模式的不一致性,NLA 可能会产生不切实际的结果。现有的工作忽略了这一问题,它们只测量整个图像的平均重建质量,而没有考虑使用 NLA 的潜在风险。为了解决这个问题,我们提出了评估 NLA 重建质量的新视角,即关注与 NLA 的像素融合方式相匹配的子像素级别。从这个角度出发,我们提供了 NLA 的近似重建性能上限,从而指导我们设计出一种简洁而有效的纹理保真策略(TFS),以减轻 NLA 带来的性能下降。此外,所提出的 TFS 作为一个通用构件,可以方便地集成到现有的基于 NLA 的 SISR 模型中。在 TFS 的基础上,我们开发了深度纹理保真网络(DTFN),使 SISR 达到了最先进的性能。我们的代码和预训练的 DTFN 可在 GitHub† 上进行验证。
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Revealing the Dark Side of Non-Local Attention in Single Image Super-Resolution
Single Image Super-Resolution (SISR) aims to reconstruct a high-resolution image from its corresponding low-resolution input. A common technique to enhance the reconstruction quality is Non-Local Attention (NLA), which leverages self-similar texture patterns in images. However, we have made a novel finding that challenges the prevailing wisdom. Our research reveals that NLA can be detrimental to SISR and even produce severely distorted textures. For example, when dealing with severely degrade textures, NLA may generate unrealistic results due to the inconsistency of non-local texture patterns. This problem is overlooked by existing works, which only measure the average reconstruction quality of the whole image, without considering the potential risks of using NLA. To address this issue, we propose a new perspective for evaluating the reconstruction quality of NLA, by focusing on the sub-pixel level that matches the pixel-wise fusion manner of NLA. From this perspective, we provide the approximate reconstruction performance upper bound of NLA, which guides us to design a concise yet effective Texture-Fidelity Strategy (TFS) to mitigate the degradation caused by NLA. Moreover, the proposed TFS can be conveniently integrated into existing NLA-based SISR models as a general building block. Based on the TFS, we develop a Deep Texture-Fidelity Network (DTFN), which achieves state-of-the-art performance for SISR. Our code and a pre-trained DTFN are available on GitHub for verification.
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