Content-Decoupled Contrastive Learning-Based Implicit Degradation Modeling for Blind Image Super-Resolution

Jiang Yuan;Ji Ma;Bo Wang;Weiming Hu
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Abstract

Implicit degradation modeling-based blind super-resolution (SR) has attracted more increasing attention in the community due to its excellent generalization to complex degradation scenarios and wide application range. How to extract more discriminative degradation representations and fully adapt them to specific image features is the key to this task. In this paper, we propose a new Content-decoupled Contrastive Learning-based blind image super-resolution (CdCL) framework following the typical blind SR pipeline. This framework introduces negative-free contrastive learning technique for the first time to model the implicit degradation representation, in which a new cyclic shift sampling strategy is designed to ensure decoupling between content features and degradation features from the data perspective, thereby improving the purity and discriminability of the learned implicit degradation space. In addition, we propose a detail-aware implicit degradation adapting module that can better adapt degradation representations to specific LR features by enhancing the basic adaptation unit’s perception of image details, significantly reducing the overall SR model complexity. Extensive experiments on synthetic and real data show that our method achieves highly competitive quantitative and qualitative results in various degradation settings while obviously reducing parameters and computational costs, validating the feasibility of designing practical and lightweight blind SR tools. Codes and models will be available at https://github.com/Fieldhunter/CdCL.
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基于内容解耦对比学习的盲图像超分辨率补充材料隐式退化建模
基于隐式退化建模的盲超分辨(SR)由于其对复杂退化场景的良好泛化和广泛的应用范围而受到越来越多的关注。如何提取更多的判别性退化表示,并使其充分适应特定的图像特征是该任务的关键。在本文中,我们提出了一种新的基于内容解耦对比学习的盲图像超分辨率(CdCL)框架。该框架首次引入无负对比学习技术对隐式退化表示进行建模,设计了一种新的循环移位采样策略,从数据角度保证了内容特征与退化特征的解耦,从而提高了学习到的隐式退化空间的纯度和可判别性。此外,我们提出了一个细节感知的隐式退化自适应模块,通过增强基本自适应单元对图像细节的感知,可以更好地将退化表示适应特定的LR特征,从而显着降低整体SR模型的复杂性。大量的合成和真实数据实验表明,我们的方法在各种退化设置下获得了极具竞争力的定量和定性结果,同时显著降低了参数和计算成本,验证了设计实用和轻量级盲SR工具的可行性。代码和模型可在https://github.com/Fieldhunter/CdCL上获得。
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