Reference-based image super-resolution (RefSR) has shown promising success in recovering high-frequency details by utilizing an external reference image (Ref). In this task, texture details are transferred from the Ref image to the low-resolution (LR) image according to their point- or patch-wise correspondence. Therefore, high-quality correspondence matching is critical. It is also desired to be computationally efficient. Besides, existing RefSR methods tend to ignore the potential large disparity in distributions between the LR and Ref images, which hurts the effectiveness of the information utilization. In this paper, we propose the MASA network for RefSR, where two novel modules are designed to address these problems. The proposed Match & Extraction Module significantly reduces the computational cost by a coarse-to-fine correspondence matching scheme. The Spatial Adaptation Module learns the difference of distribution between the LR and Ref images, and remaps the distribution of Ref features to that of LR features in a spatially adaptive way. This scheme makes the network robust to handle different reference images. Extensive quantitative and qualitative experiments validate the effectiveness of our proposed model.
翻译:基于参考的图像超分辨率(RefSR) 显示,通过使用外部参考图像(Ref),在恢复高频详细信息方面取得了大成功。在这项工作中,根据点对点或偏差通信,将Ref图像的纹理细节转换为低分辨率图像。因此,高质量的对应匹配至关重要。它也希望具有计算效率。此外,现有的RefSR方法往往忽视LR和Ref图像分布上的潜在巨大差异,这损害了信息利用的有效性。在本文中,我们提议为RefSR建立MASA网络,其中设计了两个新的模块来解决这些问题。提议的匹配和提取模块通过粗略到纯度的对应匹配方案大大降低了计算成本。空间适应模块学习LR和Ref图像之间的分布差异,并用空间适应方式将Ref特征与LF特征的分布进行重新映射。这个方案使网络能够处理不同的参考图像。广泛的定量和定性实验证实了我们拟议模型的有效性。