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Nonconvex Robust Quaternion Matrix Completion for Imaging Processing11footnotemark: 1

Baohua Huang Jiakai Chen Wen Li22footnotemark: 2
Abstract

One of the tasks in color image processing and computer vision is to recover clean data from partial observations corrupted by noise. To this end, robust quaternion matrix completion (QMC) has recently attracted more attention and shown its effectiveness, whose convex relaxation is to minimize the quaternion nuclear norm plus the quaternion L1L_{1}-norm. However, there is still room to improve due to the convexity of the convex surrogates. This paper proposes a new nonconvex robust QMC model, in which the nonconvex MCP function and the quaternion LpL_{p}-norm are used to enhance the low-rankness and sparseness of the low-rank term and sparse term, respectively. An alternating direction method of multipliers (ADMM) algorithm is developed to solve the proposed model and its convergence is given. Moreover, a novel nonlocal-self-similarity-based nonconvex robust quaternion completion method is proposed to handle large-scale data. Numerical results on color images and videos indicate the advantages of the proposed method over some existing ones.

keywords:
Robust quaternion matrix completion , Nonconvex surrogate , Nonlocal self-similarity , Alternating direction method of multiplier

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