Nanyang Technological University, Singapore 639798.
IEEE Trans Biomed Eng. 2013 Aug;60(8):2123-32. doi: 10.1109/TBME.2013.2248153. Epub 2013 Feb 21.
A brain-computer interface (BCI) acquires brain signals, extracts informative features, and translates these features to commands to control an external device. This paper investigates the application of a noninvasive electroencephalography (EEG)-based BCI to identify brain signal features in regard to actual hand movement speed. This provides a more refined control for a BCI system in terms of movement parameters. An experiment was performed to collect EEG data from subjects while they performed right-hand movement at two different speeds, namely fast and slow, in four different directions. The informative features from the data were obtained using the Wavelet-Common Spatial Pattern (W-CSP) algorithm that provided high-temporal-spatial-spectral resolution. The applicability of these features to classify the two speeds and to reconstruct the speed profile was studied. The results for classifying speed across seven subjects yielded a mean accuracy of 83.71% using a Fisher Linear Discriminant (FLD) classifier. The speed components were reconstructed using multiple linear regression and significant correlation of 0.52 (Pearson's linear correlation coefficient) was obtained between recorded and reconstructed velocities on an average. The spatial patterns of the W-CSP features obtained showed activations in parietal and motor areas of the brain. The results achieved promises to provide a more refined control in BCI by including control of movement speed.
脑-机接口(BCI)获取脑信号,提取信息特征,并将这些特征转换为命令来控制外部设备。本文研究了一种基于非侵入性脑电图(EEG)的 BCI 在识别与实际手部运动速度相关的脑信号特征中的应用。这为 BCI 系统在运动参数方面提供了更精细的控制。实验中,要求受试者以两种不同的速度(快和慢)在四个不同的方向上进行右手运动,同时采集 EEG 数据。使用小波-公共空间模式(W-CSP)算法从数据中获取信息特征,该算法提供了高时间-空间-谱分辨率。研究了这些特征对分类两种速度和重建速度曲线的适用性。对 7 名受试者的速度分类结果表明,使用 Fisher 线性判别(FLD)分类器的平均准确率为 83.71%。使用多元线性回归对速度分量进行重建,平均获得了 0.52(皮尔逊线性相关系数)的显著相关性。获得的 W-CSP 特征的空间模式显示大脑顶叶和运动区域的激活。所取得的结果有望通过包括运动速度控制来为 BCI 提供更精细的控制。