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Real-time Adaptive EEG Source Separation using Online Recursive Independent Component Analysis

机译:在线递归独立分量分析的实时自适应脑电信号源分离

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摘要

Independent Component Analysis (ICA) has been widely applied to electroencephalographic (EEG) biosignal processing and brain-computer interfaces. The practical use of ICA, however, is limited by its computational complexity, data requirements for convergence, and assumption of data stationarity, especially for high-density data. Here we study and validate an optimized online recursive ICA algorithm (ORICA) with online recursive least squares (RLS) whitening for blind source separation of high-density EEG data, which offers instantaneous incremental convergence upon presentation of new data. Empirical results of this study demonstrate the algorithm's: (a) suitability for accurate and efficient source identification in high-density (64-channel) realistically-simulated EEG data; (b) capability to detect and adapt to non-stationarity in 64-ch simulated EEG data; and (c) utility for rapidly extracting principal brain and artifact sources in real 61-channel EEG data recorded by a dry and wearable EEG system in a cognitive experiment. ORICA was implemented as functions in BCILAB and EEGLAB and was integrated in an open-source Real-time EEG Source-mapping Toolbox (REST), supporting applications in ICA-based online artifact rejection, feature extraction for real-time biosignal monitoring in clinical environments, and adaptable classifications in brain-computer interfaces.
机译:独立成分分析(ICA)已广泛应用于脑电图(EEG)生物信号处理和脑机接口。但是,ICA的实际使用受到其计算复杂性,收敛性的数据要求以及假定数据平稳性(特别是对于高密度数据)的限制。在这里,我们研究并验证了具有在线递归最小二乘(RLS)白化的优化的在线递归ICA算法(ORICA),用于高密度EEG数据的盲源分离,该算法可在呈现新数据时提供瞬时增量收敛。这项研究的经验结果证明了该算法的适用性:(a)适用于高密度(64通道)真实模拟的EEG数据中准确有效的源识别; (b)检测和适应64通道模拟EEG数据中非平稳性的能力; (c)用于在认知实验中快速提取由干式和可穿戴式EEG系统记录的真实61通道EEG数据中的主要大脑和伪影源的实用程序。 ORICA在BCILAB和EEGLAB中作为功能实现,并集成在开源实时EEG源映射工具箱(REST)中,支持基于ICA的在线人工产物剔除,特征提取以在临床环境中进行实时生物信号监控的应用,以及人机界面中的适应性分类。

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