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首页> 外文期刊>IEEE Transactions on Signal Processing >Maximum likelihood array processing in spatially correlated noise fields using parameterized signals
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Maximum likelihood array processing in spatially correlated noise fields using parameterized signals

机译:使用参数化信号在空间相关噪声场中进行最大似然阵列处理

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This paper deals with the problem of estimating signal parameters using an array of sensors. This problem is of interest in a variety of applications, such as radar and sonar source localization. A vast number of estimation techniques have been proposed in the literature during the past two decades. Most of these can deliver consistent estimates only if the covariance matrix of the background noise is known. In many applications, the aforementioned assumption is unrealistic. Recently, a number of contributions have addressed the problem of signal parameter estimation in unknown noise environments based on various assumptions on the noise. Herein, a different approach is taken. We assume instead that the signals are partially known. The received signals are modeled as linear combinations of certain known basis functions. The exact maximum likelihood (ML) estimator for the problem at hand is derived, as well as computationally more attractive approximation. The Cramer-Rao lower bound (CRB) on the estimation error variance is also derived and found to coincide with the CRB, assuming an arbitrary deterministic model and known noise covariance.
机译:本文讨论使用传感器阵列估计信号参数的问题。在诸如雷达和声纳源定位之类的各种应用中,这个问题引起了人们的兴趣。在过去的二十年中,文献中已经提出了大量的估算技术。仅当已知背景噪声的协方差矩阵时,大多数这些方法才能提供一致的估计。在许多应用中,上述假设是不现实的。近来,基于对噪声的各种假设,许多贡献解决了未知噪声环境中的信号参数估计的问题。在此,采用不同的方法。相反,我们假设信号是部分已知的。接收信号被建模为某些已知基函数的线性组合。得出针对当前问题的精确最大似然(ML)估计量,以及在计算上更具吸引力的近似值。假定任意确定性模型和已知噪声协方差,还推导了估计误差方差的Cramer-Rao下界(CRB),并发现与CRB一致。

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