Maximum-likelihood wideband direction-of-arrival estimation

D. Fuhrmann, M. Miller
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Abstract

The specific problem that was addressed is one in which there is limited data in both the temporal and spatial dimensions, so that one cannot assume the use of ordinary Fourier transforms on the time domain outputs of each sensor. Rather, zero-mean Gaussian statistics were assumed, and the likelihood of the observed data was directly maximized with respect to the parameters which enter into the covariance matrix of the multivariate distribution. Two models were pursued. The first is a parametric model in which it is assumed that there are a fixed number of independent, wide-sense-stationary, plane-wave signals. The second model is one in which there is energy impinging upon the array from a spatial continuum. EM (expectation-maximization) algorithms appropriate for these two problems were derived.<>
最大似然宽带到达方向估计
我们要解决的具体问题是,在时间和空间维度上的数据都是有限的,因此我们不能假设在每个传感器的时域输出上使用普通的傅里叶变换。相反,假设零均值高斯统计量,并且观测数据的似然性直接与进入多元分布的协方差矩阵的参数相最大化。采用了两种模式。第一种是参数模型,其中假设存在固定数量的独立的、广义平稳的平面波信号。第二种模型是有能量从空间连续体冲击到阵列上。导出了适用于这两个问题的EM(期望最大化)算法。
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