基于截断核范数最小化的群稀疏表示图像压缩感知

Tianyu Geng, Guiling Sun, Yi Xu, Zhouzhou Li
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引用次数: 1

摘要

群稀疏表示(GSR)在图像压缩感知(CS)恢复中显示出巨大的潜力,这可以看作是一个低秩矩阵近似问题。核范数最小化只能同时最小化所有奇异值。最近的研究表明,截断核范数最小化(TNNM)可以更好地近似矩阵秩。本文将群稀疏表示与截断核范数最小化联系起来,用于CS图像恢复。然后,提出了一种基于乘法器交替方向法(ADMM)的快速收敛算法。此外,每个组的有效字典是从恢复图像本身而不是大量的自然图像数据集中学习的。实验结果表明,GSR-TNNM方法具有较好的收敛性能,与现有方法相比,能够显著提高图像CS恢复质量。
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Image compressive sensing using group sparse representation via truncated nuclear norm minimization
Group sparse representation (GSR) has shown great potential in image Compressive Sensing (CS) recovery, which can be considered as a low rank matrix approximation problem. The nuclear norm minimization can only minimize all the singular values simultaneously. Recent advances have suggested the truncated nuclear norm minimization (TNNM) to better approximate the matrix rank. In this paper, we connect group sparse representation with truncated nuclear norm minimization for CS image recovery. Then, an implementation of fast convergence via the alternating direction method of multipliers (ADMM) is developed to solve the proposed problem. Moreover, an effective dictionary for each group is learned from the recovery image itself rather than a large number of natural image dataset. Experimental results demonstrate that the proposed GSR-TNNM method achieves a good convergence performance and is able to improve image CS recovery quality significantly compared with the state-of-the-art methods.
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