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EEG Based Foot Movement Onset Detection with the Probabilistic Classification Vector Machine

机译:概率分类向量机的基于脑电图的足部运动发作检测

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A critical issue in designing a self-paced brain computer interface (BCI) system is onset detection of the mental task from the continuous electroencephalogram (EEG) signal to produce a brain switch. This work shows significant improvement in a movement based self-paced BCI by applying a new sparse learning classification algorithm, probabilistic classification vector machines (PCVMs) to classify EEG signal. Constant-Q filters instead of constant bandwidth filters for frequency decomposition are also shown to enhance the discrimination of movement related patterns from EEG patterns associated with idle state. Analysis of the data recorded from seven subjects executing foot movement using the constant-Q filters and PCVMs shows a statistically significant 17% (p<0.03) average improvement in true positive rate (TPR) and a 2% (p<0.03) reduction in false positive rate (FPR) compared with applying constant bandwidth filters and SVM classifier.
机译:设计自定进度的大脑计算机接口(BCI)系统时的关键问题是从连续脑电图(EEG)信号中开始检测心理任务以产生大脑开关。这项工作通过应用一种新的稀疏学习分类算法,概率分类向量机(PCVM)对EEG信号进行分类,显示了基于运动的自定节奏BCI的显着改进。还示出了恒定Q滤波器而不是用于频率分解的恒定带宽滤波器,以增强与运动相关的模式与与空闲状态相关的EEG模式的区别。对使用恒定Q滤波器和PCVM对执行脚部运动的7位受试者记录的数据进行的分析显示,在真实阳性率(TPR)方面,统计学意义上的平均改善幅度为17%(p <0.03),而在统计学上,则为2%(p <0.03)。与应用恒定带宽滤波器和SVM分类器相比,误报率(FPR)。

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