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Extracting Rhythmic Brain Activity for Brain-Computer Interfacing through Constrained Independent Component Analysis

机译:通过约束独立分量分析提取有节奏的脑活动以进行脑机接口。

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We propose a technique based on independent component analysis (ICA) with constraints, applied to the rhythmic electroencephalographic (EEG) data recorded from a brain-computer interfacing (BCI) system. ICA is a technique that can decompose the recorded EEG into its underlying independent components and in BCI involving motor imagery, the aim is to isolate rhythmic activity over the sensorimotor cortex. We demonstrate that, through the technique of spectrally constrained ICA, we can learn a spatial filter suited to each individual EEG recording. This can effectively extract discriminatory information from two types of single-trial EEG data. Through the use of the ICA algorithm, the classification accuracy is improved by about 25%, on average, compared to the performance on the unpreprocessed data. This implies that this ICA technique can be reliably used to identify and extract BCI-related rhythmic activity underlying the recordings where a particular filter is learned for each subject. The high classification rate and low computational cost make it a promising algorithm for application to an online BCI system.
机译:我们提出基于约束的独立成分分析(ICA)的技术,应用于从脑机接口(BCI)系统记录的节律性脑电图(EEG)数据。 ICA是一种可以将记录的EEG分解成其基础独立成分的技术,在涉及运动图像的BCI中,其目的是隔离感觉运动皮层上的节律活动。我们证明,通过频谱受限的ICA技术,我们可以学习适用于每个单独的EEG记录的空间滤波器。这样可以有效地从两种类型的单项EEG数据中提取歧视性信息。与未处理数据的性能相比,通过使用ICA算法,分类精度平均提高了约25%。这意味着,该ICA技术可以可靠地用于识别和提取与录音相关的BCI相关的节奏活动,在录音中可以为每个对象学习特定的过滤器。高分类率和低计算量使它成为应用于在线BCI系统的有前途的算法。

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