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On Kronecker and Linearly Structured Covariance Matrix Estimation

机译:关于Kronecker和线性结构协方差矩阵估计

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摘要

The estimation of covariance matrices is an integral part of numerous signal processing applications. In many scenarios, there exists prior knowledge on the structure of the true covariance matrix; e.g., it might be known that the matrix is Toeplitz in addition to Hermitian. Given the available data and such prior structural knowledge, estimates using the known structure can be expected to be more accurate since more data per unknown parameter is available. In this work, we study the case when a covariance matrix is known to be the Kronecker product of two factor matrices, and in addition the factor matrices are Toeplitz. We devise a two-step estimator to accurately solve this problem: the first step is a maximum likelihood (ML) based closed form estimator, which has previously been shown to give asymptotically (in the number of samples) efficient estimates when the relevant factor matrices are Hermitian or persymmetric. The second step is a re-weighting of the estimates found in the first steps, such that the final estimate satisfies the desired Toeplitz structure. We derive the asymptotic distribution of the proposed two-step estimator and conclude that the estimator is asymptotically statistically efficient, and hence asymptotically ML. Through Monte Carlo simulations, we further show that the estimator converges to the relevant Cramer-Rao lower bound for fewer samples than existing methods.
机译:协方差矩阵的估计是众多信号处理应用中不可或缺的一部分。在许多情况下,存在关于真协方差矩阵结构的先验知识;例如,除了 Hermitian 之外,矩阵可能是 Toeplitz。鉴于现有数据和此类先验结构知识,使用已知结构的估计可以预期会更准确,因为每个未知参数都有更多的数据可用。在这项工作中,我们研究了协方差矩阵已知是两个因子矩阵的 Kronecker 乘积,此外因子矩阵是 Toeplitz 的情况。我们设计了一个两步估计器来准确地解决这个问题:第一步是基于最大似然(ML)的闭式估计器,当相关因子矩阵为厄米特矩阵或过对称矩阵时,该估计器先前已被证明可以渐近(在样本数量上)给出有效的估计。第二步是对第一步中发现的估计值进行重新加权,使最终估计值满足所需的 Toeplitz 结构。我们推导了所提出的两步估计器的渐近分布,并得出结论,该估计器在渐近统计上是有效的,因此是渐近的ML。通过蒙特卡罗模拟,我们进一步表明,与现有方法相比,对于更少的样本,估计器收敛到相关的 Cramer-Rao 下界。

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