Nonconvex optimization for third‐order tensor completion under wavelet transform

IF 1.8 3区 数学 Q1 MATHEMATICS
Quan Yu, Minru Bai
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引用次数: 0

Abstract

The main aim of this paper is to develop a nonconvex optimization model for third‐order tensor completion under wavelet transform. On the one hand, through wavelet transform of frontal slices, we divide a large tensor data into a main part tensor and three detail part tensors, and the elements of these four tensors are about a quarter of the original tensors. Solving these four small tensors can not only improve the operation efficiency, but also better restore the original tensor data. On the other hand, by using concave correction term, we are able to correct for low rank of tubal nuclear norm (TNN) data fidelity term and sparsity of l1$$ {l}_1 $$ ‐norm data fidelity term. We prove that the proposed algorithm can converge to some critical point. Experimental results on image, magnetic resonance imaging and video inpainting tasks clearly demonstrate the superior performance and efficiency of our developed method over state‐of‐the‐arts including the TNN and other methods.
小波变换下三阶张量补全的非凸优化
本文的主要目的是建立一个小波变换下三阶张量补全的非凸优化模型。一方面,通过额片的小波变换,将一个大张量数据划分为一个主张量和三个细节张量,这四个张量的元素约为原始张量的四分之一;求解这四个小张量不仅可以提高运算效率,而且可以更好地恢复原始张量数据。另一方面,通过使用凹形校正项,我们能够校正低秩的管核范数(TNN)数据保真度项和l1 $$ {l}_1 $$‐范数数据保真度项的稀疏性。我们证明了该算法能够收敛到某个临界点。图像、磁共振成像和视频喷漆任务的实验结果清楚地表明,我们开发的方法比包括TNN和其他方法在内的最先进方法具有优越的性能和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.40
自引率
2.30%
发文量
50
审稿时长
12 months
期刊介绍: Manuscripts submitted to Numerical Linear Algebra with Applications should include large-scale broad-interest applications in which challenging computational results are integral to the approach investigated and analysed. Manuscripts that, in the Editor’s view, do not satisfy these conditions will not be accepted for review. Numerical Linear Algebra with Applications receives submissions in areas that address developing, analysing and applying linear algebra algorithms for solving problems arising in multilinear (tensor) algebra, in statistics, such as Markov Chains, as well as in deterministic and stochastic modelling of large-scale networks, algorithm development, performance analysis or related computational aspects. Topics covered include: Standard and Generalized Conjugate Gradients, Multigrid and Other Iterative Methods; Preconditioning Methods; Direct Solution Methods; Numerical Methods for Eigenproblems; Newton-like Methods for Nonlinear Equations; Parallel and Vectorizable Algorithms in Numerical Linear Algebra; Application of Methods of Numerical Linear Algebra in Science, Engineering and Economics.
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