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Parameter Estimation Using Quantized Cloud MIMO Radar Measurements

机译:使用量化云MIMO雷达测量的参数估计

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Joint location and velocity estimation is studied for cloud multiple-input multiple-output (MIMO) radar. To reduce communication burden, consider that local measurements received at each receiver contributed by each transmitter are quantized before sent to a fusion center. Unlike the existing literature on distributed and quantized sensor data estimation, the signal model for our problem turns out to be nonlinear and complex. We first analyze the quantization outputs, whose probability mass functions are utilized to calculate the maximum-likelihood (ML) estimates and the Cramer-Rao bounds (CRBs). Then, to facilitate computation, the quantization outputs are approximated as the inputs plus Gaussian quantization error. The corresponding ML estimates and CRBs are provided. Estimation performance under the direct and approximate analyses are compared and the effect of the quantization bits is presented.
机译:针对云多输入多输出(MIMO)雷达研究了联合位置和速度估计。为了减少通信负担,请考虑在发送到融合中心之前量化在每个发送器贡献的每个接收器上接收的本地测量。与现有文献的分布式和量化传感器数据估算不同,我们问题的信号模型结果是非线性和复杂的。我们首先分析量化输出,其概率质量函数用于计算最大似然(ML)估计和爬行员界限(CRB)。然后,为了促进计算,量化输出被近似为输入加高斯量化误差。提供了相应的ML估计和CRB。比较直接和近似分析下的估计性能,并提出了量化比特的效果。

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