基于参考的立体图像超分辨率迭代交互P - 2匹配

Runmin Cong;Rongxin Liao;Feng Li;Ronghui Sheng;Huihui Bai;Renjie Wan;Sam Kwong;Wei Zhang
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引用次数: 0

摘要

立体图像超分辨率(SSR)利用立体图像左右视图之间的互补信息,在提高立体图像质量方面具有广阔的前景。大多数SSR方法主要集中在低分辨率(LR)空间的互视对应。参考一个视图的高质量SR图像对另一个视图的SR图像的潜力往往被忽视,而那些具有丰富纹理的图像有助于准确对应。因此,我们提出了基于参考的迭代交互(RIISSR),它利用基于参考的迭代逐像素和逐块匹配,称为$P^{2}$ -Matching,来建立SSR的跨视角和跨分辨率对应关系。具体而言,我们首先设计了并行级联的信息感知块(IPB),以提取不同视图的分层上下文特征。在两个并行ipb之间嵌入逐像素匹配,以利用LR空间中的跨视图交互。然后通过利用SR立体对作为另一个相互参考来执行迭代的补丁智能匹配,利用跨尺度补丁递归特性来学习SSR性能的高分辨率(HR)对应。此外,我们引入了监督侧出调制器(SSOM)来重新加权局部视图内特征并产生中间SR图像,无缝地连接了两种匹配机制。实验结果表明,RIISSR相对于现有的先进方法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reference-Based Iterative Interaction With P2-Matching for Stereo Image Super-Resolution
Stereo Image Super-Resolution (SSR) holds great promise in improving the quality of stereo images by exploiting the complementary information between left and right views. Most SSR methods primarily focus on the inter-view correspondences in low-resolution (LR) space. The potential of referencing a high-quality SR image of one view benefits the SR for the other is often overlooked, while those with abundant textures contribute to accurate correspondences. Therefore, we propose Reference-based Iterative Interaction (RIISSR), which utilizes reference-based iterative pixel-wise and patch-wise matching, dubbed $P^{2}$ -Matching, to establish cross-view and cross-resolution correspondences for SSR. Specifically, we first design the information perception block (IPB) cascaded in parallel to extract hierarchical contextualized features for different views. Pixel-wise matching is embedded between two parallel IPBs to exploit cross-view interaction in LR space. Iterative patch-wise matching is then executed by utilizing the SR stereo pair as another mutual reference, capitalizing on the cross-scale patch recurrence property to learn high-resolution (HR) correspondences for SSR performance. Moreover, we introduce the supervised side-out modulator (SSOM) to re-weight local intra-view features and produce intermediate SR images, which seamlessly bridge two matching mechanisms. Experimental results demonstrate the superiority of RIISSR against existing state-of-the-art methods.
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