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Welch bound-achieving compressed sensing matrices from optimal codebooks

机译:从最佳码本获得压缩传感矩阵的Welch绑定

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Compressed sensing (CS) is a new data acquisition theory taking full use of the sparsity of signals. It reveals that higher-dimensional sparse signals can be reconstructed from fewer nonadaptive linear measurements. The construction of CS matrices in CS is the key problem. In this paper, the deterministic CS matrices from optimal codebooks are constructed. Furthermore, the maximum sparsity of recovering the sparse signals by using our CS matrices are obtained. Meanwhile, a comparison is made with the CS matrices constructed by DeVore based on polynomials over finite fields. In the numerical simulations, our CS matrix outperforms DeVore's matrix in the process of recovering sparse signals.
机译:压缩感测(CS)是一种新的数据采集理论,采用信号的稀疏性。 它揭示了可以从较少的非接种线性测量重建高维稀疏信号。 CS中的CS矩阵的构建是关键问题。 在本文中,构造了来自最佳码本的确定性CS矩阵。 此外,获得了通过使用CS矩阵恢复稀疏信号的最大稀疏性。 同时,利用由有限领域的多项式构成的CS矩阵进行比较。 在数值模拟中,我们的CS矩阵在恢复稀疏信号的过程中优于雷梅尔的矩阵。

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