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Low-Rank Tensor Completion by Truncated Nuclear Norm Regularization

机译:截断的核规范正则化实现低阶张量完成

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Currently, low-rank tensor completion has gained cumulative attention in recovering incomplete visual data whose partial elements are missing. By taking a color image or video as a three-dimensional (3D) tensor, previous studies have suggested several definitions of tensor nuclear norm. However, they have limitations and may not properly approximate the real rank of a tensor. Besides, they do not explicitly use the low-rank property in optimization. It is proved that the recently proposed truncated nuclear norm (TNN) can replace the traditional nuclear norm, as a better estimation to the rank of a matrix. Thus, this paper presents a new method called the tensor truncated nuclear norm (T-TNN), which proposes a new definition of tensor nuclear norm and extends the truncated nuclear norm from the matrix case to the tensor case. Beneficial from the low rankness of TNN, our approach improves the efficacy of tensor completion. We exploit the previously proposed tensor singular value decomposition and the alternating direction method of multipliers in optimization. Extensive experiments on real-world videos and images demonstrate that the performance of our approach is superior to those of existing methods.
机译:当前,低阶张量完成在恢复缺少部分元素的不完整视觉数据方面引起了广泛的关注。通过将彩色图像或视频作为三维(3D)张量,先前的研究提出了张量核范数的几种定义。但是,它们有局限性,可能无法正确近似张量的真实等级。此外,他们没有在优化中明确使用低等级属性。事实证明,最近提出的截断核规范(TNN)可以代替传统的核规范,作为对矩阵秩的更好估计。因此,本文提出了一种称为张量截断核规范(T-TNN)的新方法,该方法提出了张量核规范的新定义,并将截断核规范从矩阵格扩展到张量格。从TNN的低秩获益,我们的方法提高了张量完成的功效。我们利用先前提出的张量奇异值分解和乘法器的交替方向方法进行优化。在现实世界的视频和图像上进行的大量实验表明,我们的方法的性能优于现有方法。

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