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首页> 外文期刊>IEEE Transactions on Acoustics, Speech, and Signal Processing >A separable cross-entropy approach to power spectral estimation
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A separable cross-entropy approach to power spectral estimation

机译:功率谱估计的可分离交叉熵方法

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An approach to power spectrum estimation that is based on a separable cross-entropy modeling procedure is presented. The authors start with a model of a multichannel, multidimensional, stationary Gaussian random process that is sampled on a nonuniform grid. An approximate separable model in which selected frequency samples of the process are modeled as independent random variables, is then fitted to it. Two cross-entropy-like criteria are used to select optimal separable approximations. One of them yields a spectral estimation algorithm that is a generalized version of Capon's maximum-likelihood method, and the other is similar to classical windowing methods. They discuss different strategies for designing bandpass filters for use with the cross-entropy approach.
机译:提出了一种基于可分离的交叉熵建模过程的功率谱估计方法。作者从多通道,多维,平稳的高斯随机过程模型开始,该模型在非均匀网格上采样。然后将一个近似的可分离模型拟合到该模型中,在该模型中,将过程的选定频率样本建模为独立随机变量。使用两个类似交叉熵的准则来选择最佳的可分离近似值。它们之一产生频谱估计算法,该算法是Capon最大似然方法的广义版本,而另一种类似于经典的开窗方法。他们讨论了设计用于交叉熵方法的带通滤波器的不同策略。

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