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任意概率密度信号的盲分离
引用本文:丁铎 ,贾永强 ,王映民.任意概率密度信号的盲分离[J].微计算机信息,2005(20).
作者姓名:丁铎  贾永强  王映民
作者单位:河南郑州解放军信息工程大学信息工程学院 450002
基金项目:国家自然科学基金60172029
摘    要:独立分量分析(ICA)是一种把多维随机矢量转换为尽可能统计独立的分量的统计方法,被广泛用于非高斯信号处理领域。本文给出了一种基于峰度的盲源分离(BSS)算法,也可看作是最大似然方法的扩展,解决了最大似然方法限制过多的缺陷,且与用Comon的方法求解Givens矩阵相比,结构清晰、实现简单。仿真证明了算法的有效性。

关 键 词:ICA  盲源分离  最大似然  扩展最大似然Givens矩阵

Blind Separation of Independent Sources with Any Probability Density Function
Ding,Duo Jia,YongqiangWang,Yingmin.Blind Separation of Independent Sources with Any Probability Density Function[J].Control & Automation,2005(20).
Authors:Ding  Duo Jia  YongqiangWang  Yingmin
Affiliation:(Information Engineering University of PLA,Zhengzhou 450002,China) Ding,Duo Jia,YongqiangWang,Yingmin
Abstract:Independent component analysis ( ICA) is a statisticamethod for transforming an observed multidimensional randomvector into components that are statistically as independent fromeach other as possible. It is widely used in nonGaussian signalsprocessing. An algorithm of ICA based on kurtosis is presentedin this paper; it can also be regarded as Extended MaximumLikelihood (ML); the problem of too many constraints in ML isolved ; it is simpler and easier to implement in solving Give-ns Matrix compared with Comon' s. The simulation justifies iteffectiveness.
Keywords:ICA  Blind Source Separation (BSS)  MaximumLikelihood (ML)  Extended Maximum Likelihood (EML)  Givens Matrix
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