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Independent Component Analysis of Electroencephalographic Signals

机译:脑电信号的独立成分分析

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This paper discusses the independent component analysis (ICA) technique and its applications to the analysis of Electroencephalographic (EEG) signal. ICA of a random vector consists of searching for a linear transformation that minimizes the statistical dependence between its components. For the EEG interpretation and analysis, there are some artifacts problems when rejecting contaminated EEG segments results in an unacceptable data loss. The ICA filters trained on EEG data collected during these sessions identified statistically independent source channels which could then be further processed using event-related potential (ERP), event-related spectral perturbation (ERSP), and other signal processing techniques. In this contribution some recent application of ICA and demonstrate its application to the EEG recordings from the human brain.
机译:本文讨论了独立成分分析(ICA)技术及其在脑电图(EEG)信号分析中的应用。随机向量的ICA包括搜索一个线性变换,该线性变换最大程度地减小了其分量之间的统计依赖性。对于EEG的解释和分析,当拒绝受污染的EEG段时会出现一些伪像问题,从而导致数据丢失不可接受。对在这些会话期间收集的EEG数据进行训练的ICA滤波器确定了统计上独立的源通道,然后可以使用事件相关电位(ERP),事件相关频谱扰动(ERSP)和其他信号处理技术对其进行进一步处理。在这项贡献中,ICA的一些最新应用并证明了其在人脑EEG录音中的应用。

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