"Sparse + Low-Rank'' Tensor Completion Approach for Recovering Images and Videos
"Sparse + Low-Rank'' Tensor Completion Approach for Recovering Images and Videos
Recovering color images and videos from highly undersampled data is a fundamental and challenging task in face recognition and computer vision. By the multi-dimensional nature of color images and videos, in this paper, we propose a novel tensor completion approach, which is able to efficiently explore the sparsity of tensor data under the discrete cosine transform (DCT). Specifically, we introduce two ``sparse + low-rank'' tensor completion models as well as two implementable algorithms for finding their solutions. The first one is a DCT-based sparse plus weighted nuclear norm induced low-rank minimization model. The second one is a DCT-based sparse plus $p$-shrinking mapping induced low-rank optimization model. Moreover, we accordingly propose two implementable augmented Lagrangian-based algorithms for solving the underlying optimization models. A series of numerical experiments including color image inpainting and video data recovery demonstrate that our proposed approach performs better than many existing state-of-the-art tensor completion methods, especially for the case when the ratio of missing data is high.
Chen Ling、Liqun Qi、Yanwei Xu、Chenjian Pan、Hongjin He
计算技术、计算机技术
Chen Ling,Liqun Qi,Yanwei Xu,Chenjian Pan,Hongjin He."Sparse + Low-Rank'' Tensor Completion Approach for Recovering Images and Videos[EB/OL].(2021-10-18)[2025-08-02].https://arxiv.org/abs/2110.09298.点此复制
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