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Optimized structured sparse sensing matrices for compressive sensing

机译:针对压缩感测的优化结构化稀疏感测矩阵

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We consider designing a robust structured sparse sensing matrix consisting of a sparse matrix with a few non-zero entries per row and a dense base matrix for capturing signals efficiently. We design the robust structured sparse sensing matrix through minimizing the distance between the Gram matrix of the equivalent dictionary and the target Gram of matrix holding small mutual coherence. Moreover, a regularization is added to enforce the robustness of the optimized structured sparse sensing matrix to the sparse representation error (SRE) of signals of interests. An alternating minimization algorithm with global sequence convergence is proposed for solving the corresponding optimization problem. Numerical experiments on synthetic data and natural images show that the obtained structured sensing matrix results in a higher signal reconstruction than a random dense sensing matrix. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们考虑设计一个健壮的结构化稀疏传感矩阵,该矩阵由每行具有几个非零条目的稀疏矩阵和一个用于有效捕获信号的密集基础矩阵组成。我们通过最小化等效字典的Gram矩阵与保持小相干性的目标目标Gram之间的距离来设计鲁棒的结构化稀疏感测矩阵。此外,添加了正则化以将优化的结构化稀疏感测矩阵的鲁棒性增强到感兴趣信号的稀疏表示误差(SRE)。为了解决相应的优化问题,提出了一种具有全局序列收敛性的交替最小化算法。合成数据和自然图像的数值实验表明,所获得的结构化传感矩阵比随机密集传感矩阵具有更高的信号重构能力。 (C)2019 Elsevier B.V.保留所有权利。

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