论文标题

通过自voltolution利用非本地先验来利用高效图像恢复

Exploiting Non-Local Priors via Self-Convolution For Highly-Efficient Image Restoration

论文作者

Guo, Lanqing, Zha, Zhiyuan, Ravishankar, Saiprasad, Wen, Bihan

论文摘要

构建有效的图像先验对于解决图像处理和成像中的不良反问题至关重要。最近提出的著作提议通过对相似的贴片进行分组并在许多应用中演示最新的结果来利用图像非本地相似性。但是,与基于过滤或稀疏性的经典方法相比,大多数非本地算法都是耗时的,这主要是由于高效和冗余块匹配步骤,需要计算每对重叠贴片之间的距离。在这项工作中,我们提出了一个新颖的自volution volution操作员,以一种自我监督的方式利用图像非本地相似性。所提出的自voltolution可以概括常用的块匹配步骤,并以廉价的计算产生等效的结果。此外,通过应用自相关,我们提出了一个有效的多模式图像恢复方案,该方案比传统的块匹配对于非本地建模的效率要高得多。实验结果表明,(1)自vlouth剂可以显着加快大多数流行的非本地图像恢复算法,并具有两倍至九倍的速度,并且(2)提出的多模式图像恢复方案可在RGB-NIR图像上获得效率和有效性。该代码可在\ href {https://github.com/guolanqing/self-convolution}上公开获得。

Constructing effective image priors is critical to solving ill-posed inverse problems in image processing and imaging. Recent works proposed to exploit image non-local similarity for inverse problems by grouping similar patches and demonstrated state-of-the-art results in many applications. However, compared to classic methods based on filtering or sparsity, most of the non-local algorithms are time-consuming, mainly due to the highly inefficient and redundant block matching step, where the distance between each pair of overlapping patches needs to be computed. In this work, we propose a novel Self-Convolution operator to exploit image non-local similarity in a self-supervised way. The proposed Self-Convolution can generalize the commonly-used block matching step and produce equivalent results with much cheaper computation. Furthermore, by applying Self-Convolution, we propose an effective multi-modality image restoration scheme, which is much more efficient than conventional block matching for non-local modeling. Experimental results demonstrate that (1) Self-Convolution can significantly speed up most of the popular non-local image restoration algorithms, with two-fold to nine-fold faster block matching, and (2) the proposed multi-modality image restoration scheme achieves superior denoising results in both efficiency and effectiveness on RGB-NIR images. The code is publicly available at \href{https://github.com/GuoLanqing/Self-Convolution}.

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