The design of a dual-structured measurement matrix in compressed sensing

Jianhua Qiao, Xueying Zhang
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引用次数: 2

Abstract

The design of measurement matrices is one of the key contents of the compressed sensing (CS) theory. This paper constructs a new dual-structured measurement matrix-unit array + random matrix, by combining the advantages of the random measurement matrices with high recovery probability and the structured measurement matrices of low storage. The experiments show that the reconstruction errors can be gotten lower through using the measurement matrix designed than those of the simple application of the random measurement matrix. Then a method of sub-frame overlapping is proposed for reconstructing the entire signal, which can remove large errors caused by unit array in the measurement matrix, and ensure the stability of the whole signal reconstruction. Simulation results demonstrate that the signal to noise ratio (SNR) is increased significantly and the reconstruction performance of signal is improved remarkably.
压缩感知中双结构测量矩阵的设计
测量矩阵的设计是压缩感知理论的关键内容之一。本文结合随机测量矩阵高恢复概率和结构化测量矩阵低存储的优点,构建了一种新的双结构测量矩阵-单元阵列+随机矩阵。实验表明,与简单应用随机测量矩阵相比,采用所设计的测量矩阵可以得到较低的重构误差。在此基础上,提出了一种子帧重叠重构整个信号的方法,该方法可以消除测量矩阵中单元阵列带来的较大误差,保证整个信号重构的稳定性。仿真结果表明,该方法显著提高了信噪比,显著改善了信号的重构性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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