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Maximum Likelihood Estimation of Compound-Gaussian Clutter and Target Parameters

机译:复合高斯杂波和目标参数的最大似然估计

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摘要

Compound-Gaussian models are used in radar signal processing to describe heavy-tailed clutter distributions. The important problems in compound-Gaussian clutter modeling are choosing the texture distribution, and estimating its parameters. Many texture distributions have been studied, and their parameters are typically estimated using statistically suboptimal approaches. We develop maximum likelihood (ML) methods for jointly estimating the target and clutter parameters in compound-Gaussian clutter using radar array measurements. In particular, we estimate i) the complex target amplitudes, ii) a spatial and temporal covariance matrix of the speckle component, and iii) texture distribution parameters. Parameter-expanded expectation-maximization (PX-EM) algorithms are developed to compute the ML estimates of the unknown parameters. We also derived the Cramer-Rao bounds (CRBs) and related bounds for these parameters. We first derive general CRB expressions under an arbitrary texture model then simplify them for specific texture distributions. We consider the widely used gamma texture model, and propose an inverse-gamma texture model, leading to a complex multivariate t clutter distribution and closed-form expressions of the CRB. We study the performance of the proposed methods via numerical simulations.
机译:复合高斯模型在雷达信号处理中用于描述重尾杂波分布。复合高斯杂波建模中的重要问题是选择纹理分布并估计其参数。已经研究了许多纹理分布,并且通常使用统计上次优的方法估算其参数。我们开发了最大似然(ML)方法,以联合估计使用雷达阵列测量的复合高斯杂波中的目标和杂波参数。特别地,我们估计i)复杂目标幅度,ii)散斑分量的空间和时间协方差矩阵,以及iii)纹理分布参数。开发了参数扩展期望最大化(PX-EM)算法,以计算未知参数的ML估计。我们还导出了这些参数的Cramer-Rao界限(CRB)和相关界限。我们首先在任意纹理模型下导出常规CRB表达式,然后针对特定纹理分布对其进行简化。我们考虑了广泛使用的伽马纹理模型,并提出了反伽马纹理模型,从而导致了复杂的多元t杂波分布和CRB的闭式表达式。我们通过数值模拟研究了所提出方法的性能。

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