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Optimal point target detection with unknown parameters by MIMO radars

机译:MIMO雷达的未知参数最优点目标检测

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We consider multiple-input multiple-output (MIMO) radar systems with widely spaced transmit and receive antennas. We treat the problem of detecting point targets when one or more target parameters of interest are unknown. We provide a composite hypothesis testing framework for jointly estimating such parameters along with detecting the target while only a finite number of signal samples are available. The test offered is optimal in a Neyman-Pearson-like sense such that it provides a Bayesian-optimal detection test, minimizes the average mean-square parameter estimation error subject to an upper bound constraint on the false-alarm probability, and requires a finite number of samples. While the test can be applied for concurrently detecting the target along with estimating any unknown parameter of interest, we consider the problem of detecting a target which lies in an unknown space range and find the range through estimating the vector of time delays that the emitted waveforms undergo from being illuminated to the target until being observed by the receive antennas. We also analyze the diversity gain which we define as the rate that the probability of mis-detecting a target decays with the increasing SNR and show that for a MIMO radar system with Nt and Nr transmit and receive antennas, respectively, the diversity gain is 1 for point targets.
机译:我们考虑具有宽间隔发射和接收天线的多输入多输出(MIMO)雷达系统。当一个或多个目标目标参数未知时,我们处理检测点目标的问题。我们提供了一个复合的假设测试框架,用于在仅有限数量的信号样本可用的情况下,共同估计这些参数以及检测目标。所提供的测试在类似Neyman-Pearson的意义上是最佳的,因此它提供了贝叶斯最优检测测试,在受到错误警报概率的上限约束的情况下,使平均均方参数估计误差最小化样本数。尽管该测试可用于同时检测目标和估计任何未知的感兴趣参数,但我们考虑了检测目标的问题,该目标位于未知的空间范围内,并通过估计发射波形的时间延迟矢量来找到该范围经历从被照到目标直到被接收天线观察到的过程。我们还分析了分集增益,我们将其定义为误检测目标的概率随SNR的增加而衰减的速率,并表明对于具有N t 和N r的MIMO雷达系统发射和接收天线,对于点目标,分集增益分别为1。

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