Weighted Truncated Nuclear Norm Regularization for Low-Rank Quaternion Matrix Completion
Liqiao Yang, Kit Ian Kou, Jifei Miao

TL;DR
This paper introduces a weighted truncated nuclear norm approach for low-rank quaternion matrix completion, improving accuracy and convergence in image processing tasks like de-noising and de-blurring.
Contribution
It proposes a novel quaternion truncated nuclear norm and a weighted ADMM optimization method with theoretical guarantees, enhancing low-rank matrix recovery.
Findings
Outperforms existing quaternion nuclear norm methods in accuracy.
Accelerates convergence through weighted residual error updates.
Demonstrates effectiveness on real visual datasets.
Abstract
In recent years, quaternion matrix completion (QMC) based on low-rank regularization has been gradually used in image de-noising and de-blurring.Unlike low-rank matrix completion (LRMC) which handles RGB images by recovering each color channel separately, the QMC models utilize the connection of three channels by processing them as a whole. Most of the existing quaternion-based methods formulate low-rank QMC (LRQMC) as a quaternion nuclear norm (a convex relaxation of the rank) minimization problem.The main limitation of these approaches is that the singular values being minimized simultaneously so that the low-rank property could not be approximated well and efficiently. To achieve a more accurate low-rank approximation, the matrix-based truncated nuclear norm has been proposed and also been proved to have the superiority. In this paper, we introduce a quaternion truncated nuclear norm…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Advanced Image Processing Techniques
