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Low-rank tensor completion with fractional-Jacobian-extended tensor regularization for multi-component visual data inpainting

机译:低级张力完成,带有分数 - 雅各比 - 扩展的张量正则化,用于多组分视觉数据染色

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Several low-rank tensor completion methods have been integrated with total variation (TV) regularization to retain edge information and promote piecewise smoothness. In this paper, we first construct a fractional Jacobian matrix to nonlocally couple the structural correlations across components and propose a fractional-Jacobian-extended tensor regularization model, whose energy functional was designed proportional to the mixed norm of the fractional Jacobian matrix. Consistent regularization could thereby be performed on each component, avoiding band-by-band TV regularization and enabling effective handling of the contaminated fine-grained and complex details due to the introduction of a fractional differential. Since the proposed spatial regularization is linear convex, we further produced a novel fractional generalization of the classical primal-dual resolvent to develop its solver efficiently. We then combined the proposed tensor regularization model with low-rank constraints for tensor completion and addressed the problem by employing the augmented Lagrange multiplier method, which provides a splitting scheme. Several experiments were conducted to illustrate the performance of the proposed method for RGB and multispectral image restoration, especially its abilities to recover complex structures and the details of multi-component visual data effectively. (C) 2019 Elsevier Inc. All rights reserved.
机译:几种低级张量完井方法已与总变化(电视)正则化进行集成,以保留边缘信息并促进分段平滑度。在本文中,我们首先构建分数雅可比矩阵以非统计跨越组件的结构相关性,并提出了一种分数 - 雅各的延伸的张量正则化模型,其能量函数与分数雅比亚基质的混合标准成比例。由此可以对每个组件进行一致的正则化,避免带横频带电视正则化,并使由于引入分数差分而有效地处理受污染的细粒度和复杂的细节。由于所提出的空间正则化是线性凸起,我们进一步制定了经典原始 - 双解的小说概括,以有效地发展其求解器。然后,我们将所提出的张量正则化模型与张力完成的低级约束组合,并通过采用增强拉格朗日乘法器方法来解决问题,该方法提供了一个分裂方案。进行了几个实验以说明所提出的RGB和多光谱图像恢复方法的性能,尤其是其能够有效地恢复复杂结构的能力和多分量视觉数据的细节。 (c)2019 Elsevier Inc.保留所有权利。

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