高斯杂波中 FDA-MIMO 雷达的知识辅助贝叶斯分布式目标探测

Ping Li;Bang Huang;Wen-Qin Wang
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引用次数: 0

摘要

对于频率多样阵列多入多出(FDA-MIMO)雷达,本文研究了在具有未知和随机杂波协方差矩阵的高斯杂波环境中,对具有多个散射的单程分布式目标进行知识辅助贝叶斯检测的问题。具体来说,我们利用频域的正交性建立了 FDA-MIMO 接收信号模型。随后,为了数学上的可操作性,我们为杂波协方差矩阵分配了一个逆复 Wishart 分布,作为知识辅助信息。通过自由训练数据,利用贝叶斯框架引入了两种基于 Rao 和 Wald 准则的自适应探测器,即贝叶斯 Rao(BRao)和贝叶斯 Wald(BWald)。值得注意的是,接收到的 FDA-MIMO 信号可以直接应用于自适应检测器,无需匹配滤波。仿真结果证实,在信号匹配的情况下,BWald 可以提供与现有 BGLRT 相当的检测性能。此外,在面对不匹配信号时,所提出的 BWald 和 BRao 检测器表现出更强的鲁棒性和选择能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge-Aided Bayesian Detection of Distributed Target for FDA-MIMO Radar in Gaussian Clutter
For Frequency diverse array multiple-input multiple-out (FDA-MIMO) radar, this paper studies the knowledge-aided Bayesian detection for a one-range-bin distributed target with multiple scatters operating in Gaussian clutter environment with unknown and stochastic clutter covariance matrix. Specifically, we build the FDA-MIMO receive signal model by capitalizing on orthogonality in the frequency domain. Subsequently, an inverse complex Wishart distribution is assigned to the clutter covariance matrix for mathematical tractability, serving as knowledge-aided information. With free training data, two adaptive detectors are introduced by leveraging the Bayesian framework, based on Rao and Wald criteria, namely, Bayesian Rao (BRao) and Bayesian Wald (BWald), respectively. Notably, it is essential to highlight that the received FDA-MIMO signals can be directly applied to adaptive detectors without needing matched filtering. The simulation results confirm that, in the case of signal matching, the BWald can provide detection performance comparable to that of the existing BGLRT. Additionally, when facing mismatched signals, the proposed BWald and BRao detectors demonstrate stronger robustness and selectivity capabilities.
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