一种快速的非高斯和时间相关信号盲分离算法

G. Gómez-Herrero, Zbyněk Koldovský, P. Tichavský, K. Egiazarian
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引用次数: 7

摘要

在本文中,我们提出了一种计算效率高的方法(称为FCOMBI)来结合非高斯盲源分离(BSS)和基于交叉相关的BSS的优势。这是通过融合两种著名的BSS算法(EFICA和WASOBI)的分离能力来实现的。模拟表明,我们的方法至少与其他旨在同时分离非高斯和时间相关分量的最先进方法一样准确,甚至更准确。然而,在计算效率和稳定性方面,FCOMBI是明显的赢家,这使得它特别适合分析非常高维的数据集,如高密度脑电图(EEG)或脑磁图(MEG)记录。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast algorithm for blind separation of non-Gaussian and time-correlated signals
In this article we propose a computationally efficient method (termed FCOMBI) to combine the strengths of non-Gaussianity-based Blind Source Separation (BSS) and cross-correlations-based BSS. This is done by fusing the separation abilities of two well-known BSS algorithms: EFICA and WASOBI. Simulations show that our approach is at least as accurate and often more accurate that other state-of-the-art approaches which also aim to separate simultaneously non-Gaussian and time-correlated components. However, in terms of computational efficiency and stability, FCOMBI is the clear winner which makes it specially suitable for the analysis of very high-dimensional datasets like high-density Electroencephalographic(EEG) or Magnetoencephalographic (MEG) recordings.
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