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首页> 外文期刊>IEEE Transactions on Signal Processing >Cross Entropy Approximation of Structured Gaussian Covariance Matrices
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Cross Entropy Approximation of Structured Gaussian Covariance Matrices

机译:结构高斯协方差矩阵的交叉熵逼近

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摘要

We apply two variations of the principle of minimum cross entropy (the Kullback information measure) to fit parameterized probability density models to observed data densities. For an array beamforming problem with $P$ incident narrowband point sources, $N > P$ sensors, and colored noise, both approaches yield eigenvector fitting methods similar to that of the MUSIC algorithm and of the oblique transformation in factor analysis. Furthermore, the corresponding cross entropies (CE) are related to the MDL model order selection criterion .
机译:我们应用最小交叉熵原理(Kullback信息量度)的两个变体,以将参数化概率密度模型拟合到观察到的数据密度。对于具有$ P $入射窄带点源,$ N> P $传感器和有色噪声的阵列波束成形问题,两种方法均会产生特征向量拟合方法,类似于MUSIC算法和因子分析中的倾斜变换。此外,对应的交叉熵(CE)与MDL模型顺序选择标准有关。

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