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Patch sparsity based image inpainting using local patch statistics and steering kernel descriptor

机译:使用局部补丁统计信息和导向内核描述符的基于补丁稀疏性的图像修复

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This paper presents a sparse representation based image inpainting method using local patch analysis and geometric structure based feature extraction. In local patch analysis, we approximate the target region by weighted average of some local patches which are frequently occurred within a neighborhood. Local patch statistics is applied to find the most relevant neighbors for each target patch. Further we extract local steering kernel (LSK) based feature to preserve geometric structure and texture sharpness in the target region. The advantage of non local self similarity as redundancy of similar patches in natural images is introduced to find the candidate patches from the whole source region. Based on these local and non local prior information we propose a sparse representation framework for image inpainting. Our proposed method is tested on wide range of natural images. The experimental results show the superiority of the proposed method compared to some of the previous approaches.
机译:本文提出了一种基于局部补丁分析和基于几何结构特征提取的基于稀疏表示的图像修复方法。在局部补丁分析中,我们通过在某个邻域内频繁发生的一些局部补丁的加权平均来近似目标区域。应用本地补丁统计信息来查找每个目标补丁的最相关邻居。此外,我们提取基于局部转向核(LSK)的特征,以保留目标区域中的几何结构和纹理清晰度。引入非局部自相似性作为自然图像中相似小块的冗余的优势,以从整个源区域中查找候选小块。基于这些本地和非本地先验信息,我们提出了一种用于图像修复的稀疏表示框架。我们提出的方法已在各种自然图像上进行了测试。实验结果表明,与以前的方法相比,该方法具有优越性。

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