MIMO Radar Transmit Signal Optimization for Target Localization Exploiting Prior Information

CoRR(2023)

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摘要
In this paper, we consider a multiple-input multiple-output (MIMO) radar system for localizing a target based on its reflected echo signals. Specifically, we aim to estimate the random and unknown angle information of the target, by exploiting its prior distribution information. First, we characterize the estimation performance by deriving the posterior Cram\'er-Rao bound (PCRB), which quantifies a lower bound of the estimation mean-squared error (MSE). Since the PCRB is in a complicated form, we derive a tight upper bound of it to approximate the estimation performance. Based on this, we analytically show that by exploiting the prior distribution information, the PCRB is always no larger than the CRB averaged over random angle realizations without prior information exploitation. Next, we formulate the transmit signal optimization problem to minimize the PCRB upper bound. We show that the optimal sample covariance matrix has a rank-one structure, and derive the optimal signal solution in closed form. Numerical results show that our proposed design achieves significantly improved PCRB performance compared to various benchmark schemes.
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关键词
estimation performance,MIMO radar transmit signal optimization,multiple-input multiple-output radar system,optimal sample covariance matrix,optimal signal solution,PCRB performance,PCRB upper bound,posterior Cramér-Rao bound,prior distribution information,random angle information,random angle realizations,rank-one structure,reflected echo signals,target localization,unknown angle information
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