Department of Electrical Engineering, National Central University, Jhongli, Taiwan.
Biomed Eng Online. 2013 May 21;12:46. doi: 10.1186/1475-925X-12-46.
Brain computer interface (BCI) is an emerging technology for paralyzed patients to communicate with external environments. Among current BCIs, the steady-state visual evoked potential (SSVEP)-based BCI has drawn great attention due to its characteristics of easy preparation, high information transfer rate (ITR), high accuracy, and low cost. However, electroencephalogram (EEG) signals are electrophysiological responses reflecting the underlying neural activities which are dependent upon subject's physiological states (e.g., emotion, attention, etc.) and usually variant among different individuals. The development of classification approaches to account for each individual's difference in SSVEP is needed but was seldom reported.
This paper presents a multiclass support vector machine (SVM)-based classification approach for gaze-target detections in a phase-tagged SSVEP-based BCI. In the training steps, the amplitude and phase features of SSVEP from off-line recordings were used to train a multiclass SVM for each subject. In the on-line application study, effective epochs which contained sufficient SSVEP information of gaze targets were first determined using Kolmogorov-Smirnov (K-S) test, and the amplitude and phase features of effective epochs were subsequently inputted to the multiclass SVM to recognize user's gaze targets.
The on-line performance using the proposed approach has achieved high accuracy (89.88 ± 4.76%), fast responding time (effective epoch length = 1.13 ± 0.02 s), and the information transfer rate (ITR) was 50.91 ± 8.70 bits/min.
The multiclass SVM-based classification approach has been successfully implemented to improve the classification accuracy in a phase-tagged SSVEP-based BCI. The present study has shown the multiclass SVM can be effectively adapted to each subject's SSVEPs to discriminate SSVEP phase information from gazing at different gazed targets.
脑机接口(BCI)是一种新兴的技术,可以使瘫痪患者与外部环境进行交流。在现有的 BCI 中,基于稳态视觉诱发电位(SSVEP)的 BCI 由于其易于准备、高信息传输率(ITR)、高准确性和低成本的特点而受到极大关注。然而,脑电图(EEG)信号是反映潜在神经活动的电生理反应,取决于受试者的生理状态(例如情绪、注意力等),并且通常在不同个体之间存在差异。需要开发分类方法来考虑 SSVEP 中每个个体的差异,但很少有报道。
本文提出了一种基于多类支持向量机(SVM)的分类方法,用于相位标记的 SSVEP 基于 BCI 的注视目标检测。在训练步骤中,使用离线记录的 SSVEP 的幅度和相位特征来为每个受试者训练多类 SVM。在在线应用研究中,首先使用 Kolmogorov-Smirnov(K-S)检验确定包含注视目标足够 SSVEP 信息的有效epoch,然后将有效epoch 的幅度和相位特征输入到多类 SVM 中以识别用户的注视目标。
所提出的方法在线性能达到了高准确率(89.88±4.76%)、快速响应时间(有效 epoch 长度=1.13±0.02 s)和信息传输率(ITR)为 50.91±8.70 bits/min。
基于多类 SVM 的分类方法已成功实施,以提高相位标记的 SSVEP 基于 BCI 的分类准确性。本研究表明,多类 SVM 可以有效地适应每个受试者的 SSVEP,以区分注视不同注视目标的 SSVEP 相位信息。