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Array processing with known waveform and steering vector but unknown diagonal noise covariance matrix

机译:具有已知波形和导引向量但未知对角噪声协方差矩阵的阵列处理

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摘要

The problem of estimating the complex amplitude of a signal which is known only to an unknown scaling factor with noise present is a well studied problem. Maximum likelihood (ML) and Capon estimates of the complex amplitude in the case where the noise vectors are circularly symmetric complex Gaussian with an unknown arbitrary covariance matrix have been proposed in previous literatures in closed form. In this paper, we consider the special case of the covariance matrix being diagonal (whose entries are still unknown). We reduce the ML estimation problem in this case to a non-linear optimization problem, and the optimal solution to the amplitude which maximizes the likelihood function can be obtained. We compare the performance of this method against the previously proposed method, which does not assume any structure of the covariance matrix. We show that the performance in the case wherein we use the fact that the covariance matrix is diagonal is only better in situations where the number of data samples is small. Both of the methods have the same Cramer-Rao bound (CRB), and both of them are asymptotically optimal. For large number of measurements, the mean squared errors (MSE) of both methods approach the CRB. Lastly, we provide an approximate ML solution to the problem, which has performance almost the same as the optimal solution, but computationally much more efficient.
机译:估计只有存在噪声的未知比例因子才知道的信号复振幅的问题是一个经过充分研究的问题。在先前文献中,已经以封闭形式提出了在噪声矢量是具有未知任意协方差矩阵的圆对称复高斯分布的情况下的复振幅的最大似然(ML)和Capon估计。在本文中,我们认为协方差矩阵的特殊情况是对角线(其条目仍然未知)。我们将这种情况下的ML估计问题简化为非线性优化问题,并且可以获得使似然函数最大化的幅度的最优解。我们将这种方法的性能与先前提出的方法进行了比较,该方法没有采用协方差矩阵的任何结构。我们表明,在使用协方差矩阵为对角线这一事实的情况下,性能仅在数据样本数量较少的情况下更好。两种方法都具有相同的Cramer-Rao界(CRB),并且它们都是渐近最优的。对于大量测量,两种方法的均方误差(MSE)接近CRB。最后,我们为该问题提供了一种近似的ML解决方案,其性能几乎与最佳解决方案相同,但计算效率更高。

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