异步BCI系统的生成时态ICA分类

S. Chiappa, D. Barber
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引用次数: 5

摘要

在本文中,我们研究了独立成分分析(ICA)的时间扩展在异步脑电图脑机接口系统中三种心理任务的区分。ICA最常用于脑电图的伪迹识别,很少有研究使用ICA直接区分不同类型的脑电图信号。在最近的一项工作中,我们已经表明,通过将ICA视为生成模型,与使用时间特征作为现成分类器输入的更传统的方法相比,我们可以使用贝叶斯规则来形成一个分类器,获得最先进的结果。但是,在该模型中,没有对独立组成部分的时间性质作出假设。在这项工作中,我们用一个自回归过程对隐藏成分进行建模,以研究时间信息是否能在自发心理任务的区分方面带来任何优势
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Temporal ICA for Classification in Asynchronous BCI Systems
In this paper we investigate the use of a temporal extension of independent component analysis (ICA) for the discrimination of three mental tasks for asynchronous EEG-based brain computer interface systems. ICA is most commonly used with EEG for artifact identification with little work on the use of ICA for direct discrimination of different types of EEG signals. In a recent work we have shown that, by viewing ICA as a generative model, we can use Bayes' rule to form a classifier obtaining state-of-the-art results when compared to more traditional methods based on using temporal features as inputs to off-the-shelf classifiers. However, in that model no assumption on the temporal nature of the independent components was made. In this work we model the hidden components with an autoregressive process in order to investigate whether temporal information can bring any advantage in terms of discrimination of spontaneous mental tasks
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