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Speeding up classification of multi-channel brain-computer interfaces: common spatial patterns for slow cortical potentials

机译:加速多通道脑机接口的分类:缓慢的皮层电势的常见空间模式

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During the last years interest has been growing to find an effective communication channel which translates human intentions into control signals for a computer, the so called brain-computer interface (BCI). One main goal of research is to help patients with severe neuromuscular disabilities by substituting normal motor outputs. Various cortical processes were identified which are suitable for implementing such a system on basis of scalp recorded electroencephalogram (EEG), e.g., slow cortical potentials (SCP) and event-related desynchronisation (ERD) of 10-20 Hz brain rhythms. Until quite recently BCI systems used only few EEG channels but by use of advanced machine learning techniques it became possible to exploit the spatial information provided by multi-channel EEG. While the use of such high density spatial sampling increases the accuracy of the system, it may (depending on the computational effort of the signal processing), pose a problem for the implementation of the feedback in real-time. We propose a method that offers a substantial speed-up for classification of SCP features as used in the Berlin brain computer interface (BBCI). Instead of applying the time consuming low-pass filtering to all, say 120 EEG channels, a suitable spatial projection extracts only 2 or 4 new channels which can be used without any loss of classification accuracy in our experiments. Our approach is based on the technique of common spatial patterns (CSP) which were suggested by Ramoser et al. (2000) to extract ERD features from EEG. While in its original form, CSP is only applicable to oscillatory features, we present a new variant which allows one to use CSP for SCP features without regularisation even in case of large channel numbers or few training samples.
机译:在过去的几年中,人们一直在寻找一种有效的通信渠道,这种渠道将人的意图转化为计算机的控制信号,即所谓的脑机接口(BCI),人们的兴趣日益浓厚。研究的主要目标之一是通过替代正常的运动输出来帮助重度神经肌肉残疾的患者。根据头皮记录的脑电图(EEG),例如适用于10-20 Hz脑节律的慢皮质电位(SCP)和与事件相关的失步(ERD),确定了适合于实施这种系统的各种皮质过程。直到最近,BCI系统仅使用很少的EEG通道,但是通过使用先进的机器学习技术,可以利用多通道EEG提供的空间信息。尽管使用这种高密度空间采样可以提高系统的精度,但它可能(取决于信号处理的计算工作量)为实时实现反馈带来了问题。我们提出了一种方法,该方法可以大大加快柏林脑计算机接口(BBCI)中使用的SCP特征分类的速度。合适的空间投影不会对所有(例如120个EEG)通道应用费时的低通滤波,而是仅提取2个或4个新通道,这些新通道可以在我们的实验中使用,而不会损失任何分类精度。我们的方法基于Ramoser等人提出的常见空间模式(CSP)技术。 (2000年)从EEG中提取ERD特征。尽管CSP以其原始形式仅适用于振荡特征,但我们提出了一种新的变体,即使在通道数较大或训练样本较少的情况下,也可以将CSP用于SCP特征而无需进行正则化。

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