School of Science, Xi'an Jiaotong University, Xi'an, Shaanxi 710049, China.
IEEE Trans Image Process. 2010 May;19(5):1153-65. doi: 10.1109/TIP.2010.2042098. Epub 2010 Feb 2.
This paper introduces a novel examplar-based inpainting algorithm through investigating the sparsity of natural image patches. Two novel concepts of sparsity at the patch level are proposed for modeling the patch priority and patch representation, which are two crucial steps for patch propagation in the examplar-based inpainting approach. First, patch structure sparsity is designed to measure the confidence of a patch located at the image structure (e.g., the edge or corner) by the sparseness of its nonzero similarities to the neighboring patches. The patch with larger structure sparsity will be assigned higher priority for further inpainting. Second, it is assumed that the patch to be filled can be represented by the sparse linear combination of candidate patches under the local patch consistency constraint in a framework of sparse representation. Compared with the traditional examplar-based inpainting approach, structure sparsity enables better discrimination of structure and texture, and the patch sparse representation forces the newly inpainted regions to be sharp and consistent with the surrounding textures. Experiments on synthetic and natural images show the advantages of the proposed approach.
本文通过研究自然图像补丁的稀疏性,介绍了一种新颖的基于范例的修复算法。本文提出了两种新的补丁稀疏性概念,用于对补丁优先级和补丁表示进行建模,这是基于范例的修复方法中补丁传播的两个关键步骤。首先,通过非零相似度到相邻补丁的稀疏性来设计补丁结构稀疏性,以度量位于图像结构(例如边缘或角点)处的补丁的置信度。具有更大结构稀疏性的补丁将被赋予更高的优先级,以进行进一步的修复。其次,假设在局部补丁一致性约束下,可以通过稀疏表示框架中候选补丁的稀疏线性组合来表示要填充的补丁。与传统的基于范例的修复方法相比,结构稀疏性能够更好地区分结构和纹理,而补丁稀疏表示则迫使新修复的区域变得更加锐利,并与周围的纹理保持一致。在合成和自然图像上的实验表明了所提出方法的优势。