A faster tensor robust PCA via tensor factorization

被引:0
作者
An-Dong Wang
Zhong Jin
Jing-Yu Yang
机构
[1] Nanjing University of Science and Technology,School of Computer Science and Engineering
[2] Nanjing University of Science and Technology,Key Laboratory of Intelligent Perception and System for High
来源
International Journal of Machine Learning and Cybernetics | 2020年 / 11卷
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摘要
Many kinds of real-world multi-way signal, like color images, videos, etc., are represented in tensor form and may often be corrupted by outliers. To recover an unknown signal tensor corrupted by outliers, tensor robust principal component analysis (TRPCA) serves as a robust tensorial modification of the fundamental PCA. Recently, a successful TRPCA model based on the tubal nuclear norm (TNN) (Lu et al. in IEEE Trans Pattern Anal Mach Intell 42:925–938, 2019) has attracted much attention thanks to its superiority in many applications. However, TNN is computationally expensive due to the requirement of full singular value decompositions, seriously limiting its scalability to large tensors. To address this issue, we propose a new TRPCA model which adopts a factorization strategy. Algorithmically, an algorithm based on the non-convex augmented Lagrangian method is developed with convergence guarantee. Theoretically, we rigorously establish the sub-optimality of the proposed algorithm. We also extend the proposed model to the robust tensor completion problem. Both the effectiveness and efficiency of the proposed algorithm is demonstrated through extensive experiments on both synthetic and real data sets.
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页码:2771 / 2791
页数:20
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