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Alternating Optimization of Sensing Matrix and Sparsifying Dictionary for Compressed Sensing

机译:压缩感测矩阵与稀疏字典的交替优化

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This paper deals with alternating optimization of sensing matrix and sparsifying dictionary for compressed sensing systems. Under the same framework proposed by J. M. Duarte-Carvajalino and G. Sapiro, a novel algorithm for optimal sparsifying dictionary design is derived with an optimized sensing matrix embedded. A closed-form solution to the optimal dictionary design problem is obtained. A new measure is proposed for optimizing sensing matrix and an algorithm is developed for solving the corresponding optimization problem. Experiments are carried out with synthetic data and real images, which demonstrate promising performance of the proposed algorithms and superiority of the CS system designed with the optimized sensing matrix and dictionary to existing ones in terms of signal reconstruction accuracy. Particularly, the proposed CS system yields in general a much improved performance than those designed using previous methods in terms of peak signal-to-noise ratio for the application to image compression.
机译:本文讨论了压缩感知系统的感知矩阵和稀疏字典的交替优化。在J. M. Duarte-Carvajalino和G. Sapiro提出的相同框架下,推导了一种嵌入了优化感测矩阵的新颖的稀疏字典设计算法。获得最佳词典设计问题的闭式解。提出了一种优化感测矩阵的新方法,并提出了一种解决相应优化问题的算法。对合成数据和真实图像进行了实验,这些实验证明了所提出算法的良好性能,以及采用优化的感测矩阵和字典设计的CS系统在信号重建精度方面的优越性。特别地,在用于图像压缩的峰值信噪比方面,所提出的CS系统总体上比使用先前方法设计的系统具有大大改善的性能。

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