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A Sparse Representation-Based Label Pruning for Image Inpainting Using Global Optimization

机译:基于全局优化的基于稀疏表示的图像修复标签修剪

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This paper presents a new label pruning based on sparse representation in image inpainting. In this literature, the label indicates a small rectangular patch to fill the missing regions. Global optimization-based image inpainting requires heavy computational cost due to a large number of labels. Therefore, it is necessary to effectively prune redundant labels. Also, inappropriate label pruning could degrade the inpainting quality. In this paper, we adopt the sparse representation of label to obtain a few reliable labels. The sparse representation of label is used to prune the redundant labels. Sparsely represented labels as well as non-zero sparse labels with high similarity to the target region are used as reliable labels in global optimization based image inpainting. Experimental results show that the proposed method can achieve the computational efficiency and structurally consistency.
机译:本文提出了一种基于稀疏表示的图像修复新标签修剪方法。在此文献中,标签表示一个小的矩形补丁,用于填充缺失的区域。由于标签数量众多,基于全局优化的图像修复需要大量的计算成本。因此,有必要有效地修剪冗余标签。同样,不适当的标签修剪可能会降低修补质量。在本文中,我们采用标签的稀疏表示来获得一些可靠的标签。标签的稀疏表示形式用于修剪冗余标签。稀疏表示的标签以及与目标区域具有高度相似性的非零稀疏标签被用作基于全局优化的图像修复中的可靠标签。实验结果表明,该方法能够达到较高的计算效率和结构一致性。

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