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Online learning sensing matrix and sparsifying dictionary simultaneously for compressive sensing

机译:在线学习感知矩阵和稀疏字典同时进行压缩感知

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This paper considers the problem of simultaneously learning the Sensing Matrix and Sparsifying Dictionary (SMSD) on a large training dataset. To address the formulated joint learning problem, we propose an online algorithm that consists of a closed-form solution for optimizing the sensing matrix with a fixed sparsifying dictionary and a stochastic method for learning the sparsifying dictionary on a large dataset when the sensing matrix is given. Benefiting from training on a large dataset, the obtained compressive sensing (CS) system by the proposed algorithm yields a much better performance in terms of signal recovery accuracy than the existing ones. The simulation results on natural images demonstrate the effectiveness of the suggested online algorithm compared with the existing methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文考虑了在大型训练数据集上同时学习传感矩阵和稀疏字典(SMSD)的问题。为了解决公式化的联合学习问题,我们提出了一种在线算法,该算法包括一个封闭形式的解决方案,该解决方案用于使用固定的稀疏字典优化感测矩阵,以及在给出感知矩阵时在大型数据集上学习稀疏字典的随机方法。受益于对大型数据集的训练,所提出的算法所获得的压缩感知(CS)系统在信号恢复精度方面比现有系统具有更好的性能。在自然图像上的仿真结果证明了与现有方法相比,该在线算法的有效性。 (C)2018 Elsevier B.V.保留所有权利。

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