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Removal of ocular artifacts from EEG signals using ICA-RLS in BCI

机译:在BCI中使用ICA-RLS从EEG信号中去除眼部伪影

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Ocular artifacts are the most important form of interference in electroencephalogram (EEG) signals. An adaptive filter based on reference signals from an electrooculogram (EOG) can reduce ocular interference, but collecting EOG signals during a long-term EEG recording is inconvenient and uncomfortable for the subject. For removing ocular artifacts from EEG in EEG based brain computer interfaces (BCIs), a method named independent component analysis recursive least squares (ICA-RLS) is proposed. Firstly, ICA is used to decomposing multiple EEG channels into an equal number of independent components (ICs). The ocular artifacts significantly contribute to some ICs but not others. ICs that include ocular artifacts can be identified. Then adaptive filtering based on RLS uses reference signals from identified ocular ICs to reduce interference, which avoids the need for parallel EOG recordings. Based on the EEG data collected from seven subjects, the new method achieved a higher 6.7% classification accuracy than that of standard ICA method, which demonstrates a better ocular-artifact reduction by the proposed method.
机译:眼部伪影是脑电图(EEG)信号中最重要的干扰形式。基于来自眼电图(EOG)的参考信号的自适应滤波器可以减少眼部干扰,但是在长时间的EEG记录过程中收集EOG信号对于受试者而言不方便且不舒服。为了在基于脑电图的脑计算机接口(BCI)中从脑电图中去除眼部伪像,提出了一种称为独立成分分析递归最小二乘(ICA-RLS)的方法。首先,ICA用于将多个EEG通道分解为相等数量的独立组件(IC)。眼部伪影对某些IC有明显贡献,而对其他IC则无贡献。可以识别出包括眼部伪影的IC。然后,基于RLS的自适应滤波使用来自已识别的眼部IC的参考信号来减少干扰,从而避免了并行EOG记录的需要。根据从七名受试者收集的脑电数据,新方法比标准ICA方法具有更高的6.7%分类准确度,表明该方法具有更好的人工眼减少效果。

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