Recently, the high-order tensor Singular Value Decomposition (t-SVD) and the t-SVD rank has achieved great success in tensor completion. However, the t-SVD rank lacks the flexibility to capture the correlations between different modes of a high-order tensor. In addition, the Tensor Nuclear Norm (TNN), which is a convex surrogate of the t-SVD rank, applies the soft-thresholding operator to the singular value tensor in the transform domain, which will result in a bias. To overcome the mentioned shortcomings in the Low Rank Tensor Completion (LRTC) problem, we first propose a new high-order tensor average rank and its surrogate tensor φ norm. Then, we define the multi-directional tensor average rank and its surrogate multi-directional Tensor φ Norm (MDTN) by the tensor moveaxis operator to characterize the correlations between different modes of a tensor. ADMM based algorithm is designed and experiments on different visual data are carried out, experimental results show that our method outperforms the competing methods.
Han et al. (Thu,) studied this question.
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