Robust Reinforcement Learning-based Wald-type Detector for Massive MIMO Radar

29TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2021)(2021)

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摘要
The two basic performance indices characterizing the multi-target detection task in a radar system are the probability of false alarm (P-FA) and the probability of detection P-D. It is well-known that, when the disturbance model (i.e.,clutter and noise) is perfectly known, the Neyman-Pearson (NP) detector provides the best decision strategy, i.e., the detector that maximizes the P-D, while keeping a constant PFA. However, in practical scenarios, the a priori knowledge of the statistical model of the disturbance is rarely available. In this paper we investigate the robustness of a reinforcement learning (RL) based Wald-type test to guarantee reliable detection performance even without knowledge of the disturbance distribution. Specifically, the constant false alarm Rate (CFAR) property is obtained by applying tools from misspecified asymptotic statistics, while the P-D is maximized by exploiting an RL-based scheme.
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关键词
Cognitive Radar, Reinforcement Learning, Massive MIMO, robust statistics, Wald test
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