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Measurement Matrix Design for Compressive Sensing–Based MIMO Radar

机译:基于压缩感知的MIMO雷达的测量矩阵设计

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摘要

In colocated multiple-input multiple-output (MIMO) radar using compressive sensing (CS), a receive node compresses its received signal via a linear transformation, referred to as a measurement matrix. The samples are subsequently forwarded to a fusion center, where an $ell_{1}$-optimization problem is formulated and solved for target information. CS-based MIMO radar exploits target sparsity in the angle-Doppler-range space and thus achieves the high localization performance of traditional MIMO radar but with significantly fewer measurements. The measurement matrix affects the recovery performance. A random Gaussian measurement matrix, typically used in CS problems, does not necessarily result in the best possible detection performance for the basis matrix corresponding to the MIMO radar scenario. This paper considers optimal measurement matrix design with the optimality criterion depending on the coherence of the sensing matrix (CSM) and/or signal-to-interference ratio (SIR). Two approaches are proposed: the first one minimizes a linear combination of CSM and the inverse SIR, and the second one imposes a structure on the measurement matrix and determines the parameters involved so that the SIR is enhanced. Depending on the transmit waveforms, the second approach can significantly improve the SIR, while maintaining a CSM comparable to that of the Gaussian random measurement matrix (GRMM). Simulations indicate that the proposed measurement matrices can improve detection accuracy as compared to a GRMM.
机译:在使用压缩感测(CS)的并置多输入多输出(MIMO)雷达中,接收节点通过线性变换(称为测量矩阵)压缩其接收信号。样本随后被转发到融合中心,在该中心,制定并解决了 $ ell_ {1} $ 优化问题目标信息。基于CS的MIMO雷达利用角度多普勒范围空间中的目标稀疏性,从而实现了传统MIMO雷达的高定位性能,但测量量却大大减少。测量矩阵会影响恢复性能。通常在CS问题中使用的随机高斯测量矩阵不一定会导致与MIMO雷达场景相对应的基本矩阵的最佳检测性能。本文根据传感矩阵(CSM)和/或信噪比(SIR)的相干性,考虑采用最优准则的最优测量矩阵设计。提出了两种方法:第一种使CSM和逆SIR的线性组合最小化,第二种在测量矩阵上施加结构并确定所涉及的参数,从而增强SIR。根据发射波形,第二种方法可以显着改善SIR,同时保持与高斯随机测量矩阵(GRMM)相当的CSM。仿真表明,与GRMM相比,建议的测量矩阵可以提高检测精度。

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