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首页> 外文期刊>IEEE Transactions on Signal Processing >A modified likelihood function approach to DOA estimation in the presence of unknown spatially correlated Gaussian noise using a uniform linear array
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A modified likelihood function approach to DOA estimation in the presence of unknown spatially correlated Gaussian noise using a uniform linear array

机译:在存在未知空间相关高斯噪声的情况下,使用均匀线性阵列进行DOA估计的改进似然函数方法

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The problem of modified ML estimation of DOAs of multiple source signals incident on a uniform linear array (ULA) in the presence of unknown spatially correlated Gaussian noise is addressed here. Unlike previous work, the proposed method does not impose any structural constraints or parameterization of the signal and noise covariances. It is shown that the characterization suggested here provides a very convenient framework for obtaining an intuitively appealing estimate of the unknown noise covariance matrix via a suitable projection of the observed covariance matrix onto a subspace that is orthogonal complement of the so-called signal subspace. This leads to a formulation of an expression for a so-called modified likelihood function, which can be maximized to obtain the unknown DOAs. For the case of an arbitrary array geometry, this function has explicit dependence on the unknown noise covariance matrix. This explicit dependence can be avoided for the special case of a uniform linear array by using a simple polynomial characterization of the latter. A simple approximate version of this function is then developed that can be maximized via the-well-known IQML algorithm or its variants. An exact estimate based on the maximization of the modified likelihood function is obtained by using nonlinear optimization techniques where the approximate estimates are used for initialization. The proposed estimator is shown to outperform the MAP estimator of Reilly et al. (1992). Extensive simulations have been carried out to show the validity of the proposed algorithm and to compare it with some previous solutions.
机译:本文解决了在未知空间相关高斯噪声的情况下,入射到均匀线性阵列(ULA)上的多个源信号的DOA的修正ML估计问题。与以前的工作不同,所提出的方法没有对信号和噪声协方差施加任何结构性约束或参数化。可以看出,这里提出的表征提供了一个非常方便的框架,用于通过观察到的协方差矩阵在与所谓信号子空间正交的子空间上的适当投影来获得对未知噪声协方差矩阵的直观吸引人的估计。这导致了针对所谓的修正似然函数的表达式的表述,可以将其最大化以获得未知的DOA。对于任意阵列几何形状,此函数对未知噪声协方差矩阵有明确的依赖性。对于均匀线性阵列的特殊情况,可以通过使用简单的多项式表征来避免这种明显的依赖性。然后,开发出该函数的简单近似版本,可以通过众所周知的IQML算法或其变体来最大化该近似版本。通过使用非线性优化技术(基于近似估计值进行初始化),可以获取基于修正似然函数的最大值的精确估计值。结果表明,拟议的估算器优于Reilly等人的MAP估算器。 (1992)。已经进行了广泛的仿真,以证明所提出算法的有效性,并将其与一些先前的解决方案进行比较。

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