首页> 外文期刊>Frontiers of Information Technology & Electronic Engineering >Fast removal of ocular artifacts from electroencephalogram signals using spatial constraint independent component analysis based recursive least squares in brain-computer interface
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Fast removal of ocular artifacts from electroencephalogram signals using spatial constraint independent component analysis based recursive least squares in brain-computer interface

机译:在脑机接口中使用基于空间约束无关分量分析的递归最小二乘法快速从脑电图信号中去除眼部伪影

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ocular artifacts cause the main interfering signals within electroencephalogram (EEG) signal measurements. 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. To remove ocular artifacts from EEG in brain-computer interfaces (BCIs), a method named spatial constraint independent component analysis based recursive least squares (SCICA-RLS) is proposed. The method consists of two stages. In the first stage, independent component analysis (ICA) is used to decompose multiple EEG channels into an equal number of independent components (ICs). Ocular ICs are identified by an automatic artifact detection method based on kurtosis. Then empirical mode decomposition (EMD) is employed to remove any cerebral activity from the identified ocular ICs to obtain exact artifact ICs. In the second stage, first, SCICA applies exact artifact ICs obtained in the first stage as a constraint to extract artifact ICs from the given EEG signal. These extracted ICs are called spatial constraint ICs (SC-ICs). Then the RLS based adaptive filter uses SC-ICs as reference signals to reduce interference, which avoids the need for parallel EOG recordings. In addition, the proposed method has the ability of fast computation as it is not necessary for SCICA to identify all ICs like ICA. Based on the EEG data recorded from seven subjects, the new approach can lead to average classification accuracies of 3.3% and 12.6% higher than those of the standard ICA and raw EEG, respectively. In addition, the proposed method has 83.5% and 83.8% reduction in time-consumption compared with the standard ICA and ICA-RLS, respectively, which demonstrates a better and faster OA reduction.
机译:眼部伪影会导致脑电图(EEG)信号测量中的主要干扰信号。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信号对受试者而言不方便且不舒服。为了从脑机接口(BCI)中的EEG中去除眼部伪影,提出了一种基于空间约束无关分量分析的递归最小二乘(SCICA-RLS)方法。该方法包括两个阶段。在第一阶段,使用独立成分分析(ICA)将多个EEG通道分解为相等数量的独立成分(IC)。眼部IC通过基于峰度的自动伪像检测方法来识别。然后,采用经验模式分解(EMD)从已识别的眼部IC中去除任何大脑活动,以获得精确的伪像IC。在第二阶段中,首先,SCICA应用在第一阶段中获得的精确工件IC作为约束条件,以从给定的EEG信号中提取工件IC。这些提取的IC称为空间约束IC(SC-IC)。然后,基于RLS的自适应滤波器将SC-IC用作参考信号以减少干扰,从而避免了并行EOG记录的需要。此外,该方法具有快速计算的能力,因为SCICA无需识别所有IC(如ICA)。根据从七个受试者记录的EEG数据,新方法可导致平均分类准确度分别比标准ICA和原始EEG高3.3%和12.6%。此外,与标准ICA和ICA-RLS相比,该方法的时间消耗分别减少了83.5%和83.8%,这证明了OA的减少更快更好。

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