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Iterative Adaptive Nonconvex Low-Rank Tensor Approximation to Image Restoration Based on ADMM

机译:基于ADMM的图像恢复迭代自适应非凸起低级张量近似

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In this paper, in order to recover more finer details of the image and to avoid the loss of image structure information for image restoration problem, we develop an iterative adaptive weighted core tensor thresholding (IAWCTT) approach based on the alternating direction method of multipliers (ADMM). By observing the decoupling property of the ADMM algorithm, we first propose that the key step to image restoration is to tackle the denoising subproblem efficiently using appropriate prior information. Secondly, by analyzing the properties of the core tensor, we propose that low-rank tensor approximation can be implemented by penalizing the core tensor itself, instead of penalizing the CP rank, Tucker rank or the multilinear rank and Tubal rank. The IAWCTT approach is proposed to solve the denoising subproblem in the ADMM framework, and we claim that such an adaptive weighted scheme is equivalent to a kind of nonconvex penalty for the core tensor; thus, it is unnecessary to use the nonconvex penalty term to induce strong sparse/low-rank solution in image restoration optimization problem, because the scheme that selecting appropriate weights to the convex penalty term can also lead to strong sparse/low-rank solution. Numerical experiments show that our proposed model and algorithm are comparable to other state-of-the-art models and methods.
机译:在本文中,为了恢复图像的更精细细节并避免图像恢复问题的图像结构信息的丢失,我们基于乘法器的交替方向方法开发迭代自适应加权核心张阈值阈值阈值阈值阈值阈值阈值阈值阈值阈值阈值阈值阈值阈值(IAWCTT)方法( ADMM)。通过观察ADMM算法的解耦性,我们首先建议图像恢复的关键步骤是使用适当的先前信息有效地解决去噪子问题。其次,通过分析核心张量的特性,我们提出了通过惩罚核心张量本身来实现低级张量近似,而不是惩罚CP等级,塔克等级或多线性等级和管级。提出了IAWCTT方法来解决ADMM框架中的去噪子问题,我们声称这种自适应加权方案相当于核心张量的一种非凸起惩罚;因此,不必使用非凸惩罚术语在图像恢复优化问题中引起强烈的稀疏/低级解决方案,因为选择适当权重的方案也可以导致强烈的稀疏/低秩溶液。数值实验表明,我们所提出的模型和算法与其他最先进的模型和方法相当。

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