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Unsupervised movement onset detection from EEG recorded during self-paced real hand movement

机译:在自定步调的真实手运动过程中记录的EEG的无监督运动发作检测

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摘要

This article presents an unsupervised method for movement onset detection from electroencephalography (EEG) signals recorded during self-paced real hand movement. A Gaussian Mixture Model (GMM) is used to model the movement and idle-related EEG data. The GMM built along with appropriate classification and post processing methods are used to detect movement onsets using self-paced EEG signals recorded from five subjects, achieving True–False rate difference between 63 and 98%. The results show significant performance enhancement using the proposed unsupervised method, both in the sample-by-sample classification accuracy and the event-by-event performance, in comparison with the state-of-the-art supervised methods. The effectiveness of the proposed method suggests its potential application in self-paced Brain-Computer Interfaces (BCI). Keywords Movement onset detection - Electroencephalography - Self-paced BCI - Gaussian Mixture Models - Unsupervised learning - Post processing
机译:本文介绍了一种无监督方法,可根据自定步调的真实手部运动记录的脑电图(EEG)信号检测运动开始。高斯混合模型(GMM)用于对运动和与怠速有关的EEG数据进行建模。结合适当的分类和后处理方法构建的GMM用于使用从五个对象记录的自定步速EEG信号检测运动发作,从而实现了63%至98%的真假率差异。结果表明,与最新的监督方法相比,使用拟议的无监督方法在逐样本分类准确性和逐事件性能方面都有显着提高。所提出的方法的有效性表明其在自定步调的脑机接口(BCI)中的潜在应用。关键词运动发作检测-脑电图-自定节奏BCI-高斯混合模型-无监督学习-后处理

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