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Adaptive two-step Bayesian MIMO detectors in compound-Gaussian clutter

Li, Na; Yang, Haining; Cui, Guolong*; Kong, Lingjiang; Liu, Qing Huo
Science Citation Index Expanded
电子科技大学

摘要

The problem of adaptive target detection in compound-Gaussian clutter with unknown covariance matrix for multiple-input multiple-output (MIMO) radar is addressed in this paper. A set of secondary data for each receiver is assumed to be available, and the primary data and the secondary data own the same covariance matrix structure but different power levels (textures). Firstly, a Bayesian approach is proposed, where the structure is modeled as a random matrix with an appropriate distribution. Then, two ways are adopted to model the texture: an unknown deterministic quantity or a random variable ruled by certain distribution. In this framework, three adaptive generalized likelihood ratio tests (GLRTs) are developed using the two-step design procedure. Finally, the capabilities of the proposed detectors and their superiority with respect to some existing techniques are evaluated via numerical simulations.

关键词

Multiple-input multiple-output radar Adaptive detection Bayesian detection Compound-Gaussian clutter Covariance matrix estimation Maximum a posteriori estimator