Fully-Connected Tensor Network Decomposition for Robust Tensor Completion Problem
Yun-Yang Liu, Xi-Le Zhao, Guang-Jing Song, Yu-Bang Zheng, Ting-Zhu, Huang

TL;DR
This paper introduces novel FCTN-based models and algorithms for robust tensor completion, providing theoretical guarantees and demonstrating superior performance in applications like video processing.
Contribution
The paper proposes new FCTN-based convex and non-convex models for RTC, along with algorithms with proven convergence and exact recovery guarantees.
Findings
Algorithms outperform state-of-the-art methods
Theoretical guarantees for exact recovery and convergence
Effective in video completion and background subtraction
Abstract
The robust tensor completion (RTC) problem, which aims to reconstruct a low-rank tensor from partially observed tensor contaminated by a sparse tensor, has received increasing attention. In this paper, by leveraging the superior expression of the fully-connected tensor network (FCTN) decomposition, we propose a -based obust onvex optimization model (RC-FCTN) for the RTC problem. Then, we rigorously establish the exact recovery guarantee for the RC-FCTN. For solving the constrained optimization model RC-FCTN, we develop an alternating direction method of multipliers (ADMM)-based algorithm, which enjoys the global convergence guarantee. Moreover, we suggest a -based obust ononvex optimization model (RNC-FCTN) for the RTC problem. A proximal alternating minimization (PAM)-based algorithm is developed…
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