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首页> 外文期刊>IEEE Transactions on Signal Processing >Instrumental variable approach to array processing in spatially correlated noise fields
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Instrumental variable approach to array processing in spatially correlated noise fields

机译:空间相关噪声场中阵列处理的工具变量方法

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摘要

High-performance signal parameter estimation from sensor array data is a problem which has received much attention. A number of so-called eigenvector (EV) techniques such as MUSIC, ESPRIT, WSF, and MODE have been proposed in the literature. The EV techniques for array processing require knowledge of the spatial noise correlation matrix that constitutes a significant drawback. A novel instrumental variable (IV) approach to the sensor array problem is proposed. The IV technique relies on the same basic geometric properties as the EV methods to obtain parameter estimates. However, by exploiting the temporal correlation of the source signals, no knowledge of the spatial noise covariance is required. The asymptotic properties of the IV estimator are examined and an optimal IV method is derived. Computer simulations are presented to study the properties of the IV estimators in samples of practical length. The proposed algorithm is also shown to perform better than MUSIC on a full-scale passive sonar experiment.
机译:从传感器阵列数据估计高性能信号参数是一个备受关注的问题。文献中已经提出了许多所谓的特征向量(EV)技术,例如MUSIC,ESPRIT,WSF和MODE。用于阵列处理的EV技术需要了解构成严重缺陷的空间噪声相关矩阵。提出了一种新颖的仪器变量(IV)方法来解决传感器阵列问题。 IV技术依赖与EV方法相同的基本几何特性来获得参数估计。但是,通过利用源信号的时间相关性,不需要了解空间噪声协方差。检查IV估计量的渐近性质,并推导最佳IV方法。提出了计算机模拟,以研究实际长度样本中IV估计量的性质。在全面的被动声纳实验中,所提出的算法还表现出比MUSIC更好的性能。

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