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Low complexity joint estimation of reflection coefficient, spatial location, and Doppler shift for MIMO-radar by exploiting 2D-FFT

机译:利用2D-FFT对MIMO雷达的反射系数,空间位置和多普勒频移进行低复杂度联合估计

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In multiple-input multiple-output (MIMO) radar, to estimate the reflection coefficient, spatial location, and Doppler shift of a target, maximum-likelihood (ML) estimation yields the best performance. For this problem, the ML estimation requires the joint estimation of spatial location and Doppler shift, which is a two dimensional search problem. Therefore, the computational complexity of ML estimation is prohibitively high. In this work, to estimate the parameters of a target, a reduced complexity optimum performance algorithm is proposed, which allow two dimensional fast Fourier transform to jointly estimate the spatial location and Doppler shift. To asses the performances of the proposed estimators, the Cramér-Rao-lower-bound (CRLB) is derived. Simulation results show that the mean square estimation error of the proposed estimators achieve the CRLB.
机译:在多输入多输出(MIMO)雷达中,要估计目标的反射系数,空间位置和多普勒频移,最大似然(ML)估计会产生最佳性能。对于此问题,机器学习估计需要对空间位置和多普勒频移进行联合估计,这是一个二维搜索问题。因此,ML估计的计算复杂度过高。在这项工作中,为了估计目标的参数,提出了一种降低复杂度的最佳性能算法,该算法允许二维快速傅里叶变换共同估计空间位置和多普勒频移。为了评估建议的估计器的性能,导出了Cramér-Rao下界(CRLB)。仿真结果表明,所提估计量的均方根估计误差达到了CRLB。

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