A robust approach to independent component analysis and its application in the analysis of magnetoencephalographic data.
- Author:
Shoushui WEI
1
;
Qinghua HUANG
;
Peng WANG
Author Information
1. School of Control Science and Engineering, Shandong University, Ji'nan 250061, China.
- Publication Type:Journal Article
- MeSH:
Algorithms;
Humans;
Magnetoencephalography;
methods;
Principal Component Analysis;
Signal Processing, Computer-Assisted
- From:
Journal of Biomedical Engineering
2006;23(3):648-652
- CountryChina
- Language:Chinese
-
Abstract:
Independent component analysis (ICA) is a new method of signal statistical processing and widely used in many fields. We face several problems such as the different nature of source signals (e.g. both super-Gaussian and sub-Gaussian sources exist), unknown number of sources and contamination of the sensor signals with a high level of additive noise in the analysis of signal. A robust approach was proposed to solve these problems in this paper. Firstly, observations (noisy data) possessing high dimensionality were preprocessed and decomposed into a source signal subspace and a noise subspace. Then the number of sources was got through the cross-validation method, and this solved the problem that ICA could not confirm the number of sources. At last the transformed low-dimensional source signals were further separated with the fast and stable ICA algorithm. Through the analysis of artificially synthesized data and the real-world Magnetoencephalographic data, the efficacy of this robust approach was illustrated.