학술논문

Wavelet-Based Texture Reformation Network for Image Super-Resolution.
Document Type
Article
Source
IEEE Transactions on Image Processing. 2022, Vol. 31, p2647-2660. 14p.
Subject
*REFORMATION
*IMAGE reconstruction algorithms
*HIGH resolution imaging
*GABOR filters
*IMAGE reconstruction
*FEATURE extraction
Language
ISSN
1057-7149
Abstract
Most reference-based image super-resolution (RefSR) methods directly leverage the raw features extracted from a pretrained VGG encoder to transfer the matched texture information from a reference image to a low-resolution image. We argue that simply operating on these raw features neglects the influence of irrelevant and redundant information and the importance of abundant high-frequency representations, leading to undesirable texture matching and transfer results. Taking the advantages of wavelet transformation, which represents the contextual and textural information of features at different scales, we propose a Wavelet-based Texture Reformation Network (WTRN) for RefSR. We first decompose the extracted texture features into low-frequency and high-frequency sub-bands and conduct feature matching on the low-frequency component. Based on the correlation map obtained from the feature matching process, we then separately swap and transfer wavelet-domain features at different stages of the network. Furthermore, a wavelet-based texture adversarial loss is proposed to make the network generate more visually plausible textures. Experiments on four benchmark datasets demonstrate that our proposed method outperforms previous RefSR methods both quantitatively and qualitatively. The source code is available at https://github.com/zskuang58/WTRN-TIP. [ABSTRACT FROM AUTHOR]