Low-Rank Tensor Completion by Truncated Nuclear Norm Regularization

December 03, 2017 ยท Declared Dead ยท ๐Ÿ› International Conference on Pattern Recognition

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Authors Shengke Xue, Wenyuan Qiu, Fan Liu, Xinyu Jin arXiv ID 1712.00704 Category cs.CV: Computer Vision Citations 55 Venue International Conference on Pattern Recognition Last Checked 3 months ago
Abstract
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.
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