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Research on measurement matrix based on compressed sensing theory

机译:基于压缩传感理论的测量矩阵研究

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Compressed Sensing is for sparse and compressible signals, the data is compressed while the signal is sampled. This paper proposes the new deterministic measurement matrices that are studied: according to the compressible signal characteristics, we will use the unit matrix added with random orthogonal matrix and complementary sequences as the measurement matrix, and then using orthogonal matching pursuit (OMP) algorithm to reconstruct the signal, we can safely draw that as deterministic measurement matrix, they are feasible to reconstruct the original signal accurately. The simulation results show that the performances of the unit matrix added with random orthogonal matrix and complementary sequences are not only superior the partial Hadamard matrix, but also better than the Gaussian random measurement matrix.
机译:压缩传感是用于稀疏和可压缩信号,在采样信号时压缩数据。本文提出了研究的新确定性测量矩阵:根据可压缩信号特性,我们将使用随机正交矩阵和互补序列添加的单位矩阵作为测量矩阵,然后使用正交匹配追求(OMP)算法来重建信号,我们可以安全地将其作为确定性测量矩阵绘制,它们是可以准确地重建原始信号的可行性。仿真结果表明,随机正交矩阵和互补序列添加的单位矩阵的性能不仅优于部分Hadamard矩阵,而且比高斯随机测量矩阵更好。

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