2021
DOI: 10.48550/arxiv.2101.02443
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Weighted Truncated Nuclear Norm Regularization for Low-Rank Quaternion Matrix Completion

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 … Show more

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