独立成分分析无需预处理

Zhong Wang, Hongyuan Zhang
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引用次数: 1

摘要

在本文中,我们介绍了一种新的独立分量分析(ICA)算法,它不需要对混合信号进行任何预处理(与目前大多数ICA算法相反)。该算法采用零强迫技术,对一个矩阵进行在线对角化,该矩阵的条目是源信号非线性变换混合的交叉累积量。据我们所知,所提出的方法是唯一的在线ICA算法,它可以分离混合源信号,而不需要任何常用的预处理,如“居中”(从混合物中减去平均值)或“球化”(去相关或白化)。大多数其他基于高阶累积量的ICA算法涉及复杂的矩阵代数,并且缺乏理想的等变特性,这意味着当混合矩阵是病态时,这些算法可能无法产生期望的源分离。然而,本文提出的算法是等变的,并且算法的分离性能与底层混合矩阵无关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Independent Component Analysis without Preprocessing
In this paper, we introduce a novel independent component analysis (ICA) algorithm, which does not require any preprocessing of the mixed signals (as opposed to most current ICA algorithms). Using a zero-forcing technique, the algorithm performs on-line diagonalization of a matrix whose entries are cross-cumulants of nonlinearly transformed mixtures of source signals. To our knowledge, the proposed approach is the only on-line ICA algorithm that separate mixed source signals without any frequently used preprocessing such as "centering" (subtracting the means from the mixtures) or "sphering" (decorrelation or whitening). Most other higher order cumulants based ICA algorithms involve complicated matrix algebra and lacks the desirable equivariant property which means these algorithms may fail to produce the desired source separation when the mixing matrix is ill-conditioned. The algorithm proposed in this paper, however, is equivariant and the separation performance of the algorithm is independent of the underlying mixing matrix.
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