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Structure-Texture Image Decomposition Using Discriminative Patch Recurrence

机译:结构纹理图像分解使用鉴别贴片复发

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Morphology component analysis provides an effective framework for structure-texture image decomposition, which characterizes the structure and texture components by sparsifying them with certain transforms respectively. Due to the complexity and randomness of texture, it is challenging to design effective sparsifying transforms for texture components. This paper aims at exploiting the recurrence of texture patterns, one important property of texture, to develop a nonlocal transform for texture component sparsification. Since the plain patch recurrence holds for both cartoon contours and texture regions, the nonlocal sparsifying transform constructed based on such patch recurrence sparsifies both the structure and texture components well. As a result, cartoon contours could be wrongly assigned to the texture component, yielding ambiguity in decomposition. To address this issue, we introduce a discriminative prior on patch recurrence, that the spatial arrangement of recurrent patches in texture regions exhibits isotropic structure which differs from that of cartoon contours. Based on the prior, a nonlocal transform is constructed which only sparsifies texture regions well. Incorporating the constructed transform into morphology component analysis, we propose an effective approach for structure-texture decomposition. Extensive experiments have demonstrated the superior performance of our approach over existing ones.
机译:形态分量分析为结构纹理图像分解提供了一个有效的结构框架,其通过分别用某些变换缩小它们来表征结构和纹理组件。由于质地的复杂性和随机性,设计有效稀疏变换是挑战的纹理成分。本文旨在利用纹理模式的复发,纹理的一个重要特性,为纹理成分稀疏开发非局部变换。由于普通贴片复制率为动画片轮廓和纹理区域,因此基于这种补片复发构建的非竞技稀疏变换略微擦拭结构和纹理组件。因此,卡通轮廓可能被错误地分配给纹理分量,在分解中产生歧义。为了解决这个问题,我们在贴片复发前介绍了一种歧视,纹理区域中经常性斑块的空间排列表现出各向同性结构,其不同于卡通轮廓。基于之前,构建了非局部变换,其仅擦拭纹理区域。将构建的变换掺入形态分析,我们提出了一种有效的结构纹理分解方法。广泛的实验表明了我们对现有的卓越性能。

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