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Bayesian Detection in Gaussian Clutter for FDA-MIMO Radar

Bang Huang, Wen-Qin Wang, Abdul Basit, Ronghua Gui

2022IEEE Transactions on Vehicular Technology31 citationsDOI

Abstract

This paper investigates the Bayesian detection problem for a moving target that is embedded in a homogeneous Gaussian clutter with an unknown but stochastic covariance matrix for frequency diverse array multiple-input multiple-output (FDA-MIMO) radar. First, we propose a Bayesian detector based on structured generalized likelihood ratio test (SGLRT), namely BSGLRT, criteria that requires no training data. Then, we present a detector based on the Bayesian unstructured generalized likelihood ratio test (BUGLRT) to reduce the three dimensions (range-angle-Doppler) search into one-dimension Doppler searches for low-complexity implementation in practical applications. Moreover, the robustness of the BSGLRT and BUGLRT detectors is also analyzed. Numerical results reveal that the proposed Bayesian detectors and estimators, i.e. BSGLRT and BUGLRT, outperform their non-Bayesian counterparts in Gaussian clutter with a small number of snapshots and/or low signal-to-clutter rate (SCR) for FDA-MIMO radar.

Topics & Concepts

ClutterDetectorAlgorithmBayesian probabilityConstant false alarm rateLikelihood-ratio testMIMOComputer scienceCovariance matrixRadarMathematicsArtificial intelligenceStatisticsTelecommunicationsBeamformingRadar Systems and Signal ProcessingAdvanced SAR Imaging TechniquesDirection-of-Arrival Estimation Techniques
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