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Tensor Robust Principal Component Analysis: Exact Recovery of Corrupted Low-Rank Tensors via Convex Optimization

14 August 2017
Canyi Lu
Jiashi Feng
Yudong Chen
Wen Liu
Zhouchen Lin
Shuicheng Yan
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Abstract

This paper studies the Tensor Robust Principal Component (TRPCA) problem which extends the known Robust PCA (Candes et al. 2011) to the tensor case. Our model is based on a new tensor Singular Value Decomposition (t-SVD) (Kilmer and Martin 2011) and its induced tensor tubal rank and tensor nuclear norm. Consider that we have a 3-way tensor X∈Rn1×n2×n3{\mathcal{X}}\in\mathbb{R}^{n_1\times n_2\times n_3}X∈Rn1​×n2​×n3​ such that X=L0+E0{\mathcal{X}}={\mathcal{L}}_0+{\mathcal{E}}_0X=L0​+E0​, where L0{\mathcal{L}}_0L0​ has low tubal rank and E0{\mathcal{E}}_0E0​ is sparse. Is that possible to recover both components? In this work, we prove that under certain suitable assumptions, we can recover both the low-rank and the sparse components exactly by simply solving a convex program whose objective is a weighted combination of the tensor nuclear norm and the ℓ1\ell_1ℓ1​-norm, i.e., min⁡L, E ∥L∥∗+λ∥E∥1, s.t. X=L+E\min_{{\mathcal{L}},\ {\mathcal{E}}} \ \|{{\mathcal{L}}}\|_*+\lambda\|{{\mathcal{E}}}\|_1, \ \text{s.t.} \ {\mathcal{X}}={\mathcal{L}}+{\mathcal{E}}minL, E​ ∥L∥∗​+λ∥E∥1​, s.t. X=L+E, where λ=1/max⁡(n1,n2)n3\lambda= {1}/{\sqrt{\max(n_1,n_2)n_3}}λ=1/max(n1​,n2​)n3​​. Interestingly, TRPCA involves RPCA as a special case when n3=1n_3=1n3​=1 and thus it is a simple and elegant tensor extension of RPCA. Also numerical experiments verify our theory and the application for the image denoising demonstrates the effectiveness of our method.

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