一类有界分量分析算法

A. Erdogan
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引用次数: 19

摘要

有界分量分析(BCA)最近被引入作为盲源分离问题的一种替代方法。在源有界性的一般假设下,BCA为分离依赖源(甚至相关源)和独立源提供了一个灵活的框架。本文提供了一系列基于BCA方法的基本假设所隐含的几何图像的算法。我们还提供了一个数值例子来证明所提出的算法能够分离一些依赖源的混合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A family of Bounded Component Analysis algorithms
Bounded Component Analysis (BCA) has recently been introduced as an alternative method for the Blind Source Separation problem. Under the generic assumption on source boundedness, BCA provides a flexible framework for the separation of dependent (even correlated) as well as independent sources. This article provides a family of algorithms derived based on the geometric picture implied by the founding assumptions of the BCA approach. We also provide a numerical example demonstrating the ability of the proposed algorithms to separate mixtures of some dependent sources.
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