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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >Convolutive blind source separation by minimizing mutual information between segments of signals
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Convolutive blind source separation by minimizing mutual information between segments of signals

机译:通过最小化信号段之间的互信息来进行卷积盲源分离

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摘要

A method to perform convolutive blind source separation of super-Gaussian sources by minimizing the mutual information between segments of output signals is presented. The proposed approach is essentially an implementation of an idea previously proposed by Pham. The formulation of mutual information in the proposed criterion makes use of a nonparametric estimator of Renyi's α-entropy, which becomes Shannon's entropy in the limit as α approaches 1. Since α can be any number greater than 0, this produces a family of criteria having an infinite number of members. Interestingly, it appears that Shannon's entropy cannot be used for convolutive source separation with this type of estimator. In fact, only one value of α appears to be appropriate, namely α=2, which corresponds to Renyi's quadratic entropy. Four experiments are included to show the efficacy of the proposed criterion.
机译:提出了一种通过最小化输出信号段之间的互信息来执行超高斯源的卷积盲源分离的方法。所提出的方法本质上是Pham先前提出的想法的实现。拟议标准中互信息的表述使用了Renyiα熵的非参数估计量,当α接近1时,它成为极限的Shannon熵。由于α可以是大于0的任何数字,因此产生了一系列具有无限数量的成员。有趣的是,这种类型的估计器似乎不能将香农的熵用于卷积源分离。实际上,似乎只有一个合适的α值,即α= 2,它对应于Renyi的二次熵。包括四个实验,以证明所提出标准的有效性。

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