Robust tensor recovery via a nonconvex approach with ket augmentation and auto‐weighted strategy

Author:

Xie Wenhui12,Ling Chen2,He Hongjin3,Zhang Lei‐Hong1

Affiliation:

1. School of Mathematical Sciences Soochow University Suzhou China

2. Department of Mathematics Hangzhou Dianzi University Hangzhou China

3. School of Mathematics and Statistics Ningbo University Ningbo China

Abstract

AbstractIn this article, we introduce a nonconvex tensor recovery approach, which employs the powerful ket augmentation technique to expand a low order tensor into a high‐order one so that we can exploit the advantage of tensor train (TT) decomposition tailored for high‐order tensors. Moreover, we define a new nonconvex surrogate function to approximate the tensor rank, and develop an auto‐weighted mechanism to adjust the weights of the resulting high‐order tensor's TT ranks. To make our approach robust, we add two mode‐unfolding regularization terms to enhance the model for the purpose of exploring spatio‐temporal continuity and self‐similarity of the underlying tensors. Also, we propose an implementable algorithm to solve the proposed optimization model in the sense that each subproblem enjoys a closed‐form solution. A series of numerical results demonstrate that our approach works well on recovering color images and videos.

Funder

Natural Science Foundation of Zhejiang Province

National Natural Science Foundation of China

Natural Science Foundation of Ningbo Municipality

Publisher

Wiley

Reference48 articles.

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