MUSIC using Off-Origin Hessians of the Second Characteristic Function

A. Yeredor
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引用次数: 8

Abstract

In its classical form, the multiple signal classification (MUSIC) algorithm applies eigen-decomposition to the estimated correlation matrix of the noisy sensors' outputs in order to estimate the directions of arrival (DOAs) of several sources. When the noise is spatially white, consistent estimates of the DOAs are obtained. However, when the noise is spatially correlated (and / or has different variances at different sensors), the correlation-based MUSIC cannot produce consistent DOA estimates, unless the noise covariance is known in advance. To mitigate this drawback, the use of certain matrices of higher order statistics (HOS), mainly fourth-order cumulants, has been proposed, which can still lead to consistent DOA estimates when the noise is not spatially white, as long as it has a Gaussian distribution. However, estimates of the required HOS often introduce larger variances; Moreover, if the sources happen to have null cumulants of the chosen order, they remain unaccounted for in the algorithm. In this paper we propose a new target-matrix to substitute HOS as the input to MUSIC. Our target matrix is based on subtracting the observations' correlation matrix from Hessians of their second characteristic function, evaluated at several "processing points". These Hessians are related to the array steering-vectors (hence to the DOAs) in the same way as the correlation matrix, and can be easily estimated from the data. The subtraction of the correlation matrices eliminates (asymptotically) the effect of any additive independent Gaussian noise, hence maintaining consistency. We demonstrate the attainable improvement in comparative simulation
MUSIC使用Off-Origin Hessians的第二特征函数
经典形式的多信号分类(MUSIC)算法对噪声传感器输出的估计相关矩阵进行特征分解,以估计多个源的到达方向(DOAs)。当噪声为空间白噪声时,可以得到一致的doa估计。然而,当噪声是空间相关的(和/或在不同的传感器上有不同的方差),基于相关性的MUSIC不能产生一致的DOA估计,除非噪声协方差是事先已知的。为了减轻这个缺点,已经提出了使用某些高阶统计量矩阵(HOS),主要是四阶累积量,当噪声不是空间白色时,只要它具有高斯分布,它仍然可以导致一致的DOA估计。然而,所需居屋计划的估计往往有较大差异;此外,如果源恰好具有所选顺序的零累积量,则它们在算法中仍然不被考虑。本文提出了一种新的目标矩阵来代替HOS作为MUSIC的输入。我们的目标矩阵是基于从其第二个特征函数的Hessians中减去观测值的相关矩阵,在几个“处理点”进行评估。这些Hessians与阵列导向向量(因此与doa)以与相关矩阵相同的方式相关,并且可以很容易地从数据中估计出来。相关矩阵的减法(渐近地)消除了任何可加性独立高斯噪声的影响,从而保持一致性。我们在比较模拟中展示了可实现的改进
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