Expected-likelihood covariance matrix estimation for adaptive detection

Y. Abramovich, N. Spencer
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引用次数: 9

Abstract

We demonstrate that by adopting the new class of "expected-likelihood" (EL) covariance matrix estimates, instead of the traditional maximum-likelihood (ML) estimates, we can significantly enhance adaptive detection performance. These new estimates are found by searching within the properly parameterized class of admissible covariance matrices for the one that produces the likelihood ratio (LR) that is "closest possible" to the LR generated by the true (exact) covariance matrix.
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自适应检测的期望似然协方差矩阵估计
我们证明,采用新的“期望似然”(EL)协方差矩阵估计,而不是传统的最大似然(ML)估计,可以显著提高自适应检测性能。这些新的估计是通过在适当参数化的可接受协方差矩阵类中搜索产生的似然比(LR)与真实(精确)协方差矩阵产生的LR“最接近”的似然比(LR)来找到的。
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