Improved Covariance Matrix Estimation using Riemannian Geometry for Beamforming Applications

Hossein Chahrour, R. Dansereau, S. Rajan, B. Balaji
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引用次数: 2

Abstract

The estimation of interference plus noise covariance (INC) matrix for beamforming applications is considered from a Riemannian space perspective. A new INC estimation technique based on regularized Burg algorithm (RBA), Riemannian mean and Riemannian distance is proposed to maintain a stable performance in presence of angle of arrival mismatch and small sample size with high and low signal to interference plus noise ratio (SINR). The RBA is exploited to generate Toeplitz Hermitian positive definite (THPD) covariance matrices from the estimates of the reflection coefficients for each radar snapshot. The estimated INC is formulated as a linear combination of THPD covariance matrices of the interference plus noise excluding potential target snapshots. The weights of the linear combination operation are based on the Riemannian distance between the Riemannian mean and each THPD covariance matrix. The largest distance (potential target) will have zero weight and the smallest distance will have maximum weight. Simulation results demonstrate the performance of the proposed technique in comparison with sample covariance and Riemannian mean covariance under steering vector mismatch and small sample size in presence of high and low SINR.
波束形成应用中改进的黎曼几何协方差矩阵估计
从黎曼空间的角度考虑波束形成应用中干扰加噪声协方差矩阵的估计。提出了一种基于正则化Burg算法(RBA)、黎曼均值和黎曼距离的INC估计新技术,以在到达角不匹配和小样本量、高信噪比和低信噪比的情况下保持稳定的估计性能。利用RBA从每个雷达快照的反射系数估计生成Toeplitz hermite正定(THPD)协方差矩阵。估计的INC被表示为干扰和排除潜在目标快照的噪声的THPD协方差矩阵的线性组合。线性组合运算的权重基于黎曼均值与每个THPD协方差矩阵之间的黎曼距离。最大距离(潜在目标)的权重为零,最小距离的权重为最大。仿真结果表明,该方法在转向矢量失配和高、低信噪比情况下具有良好的样本协方差和黎曼均值协方差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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