Stawicki Piotr, Volosyak Ivan
Faculty of Technology and Bionics, Rhine-Waal University of Applied Sciences, 47533 Kleve, Germany.
Brain Sci. 2022 Feb 8;12(2):234. doi: 10.3390/brainsci12020234.
This paper investigates the effects of the repetitive block-wise training process on the classification accuracy for a code-modulated visual evoked potentials (cVEP)-based brain-computer interface (BCI). The cVEP-based BCIs are popular thanks to their autocorrelation feature. The cVEP-based stimuli are generated by a specific code pattern, usually the m-sequence, which is phase-shifted between the individual targets. Typically, the cVEP classification requires a subject-specific template (individually created from the user's own pre-recorded EEG responses to the same stimulus target), which is compared to the incoming electroencephalography (EEG) data, using the correlation algorithms. The amount of the collected user training data determines the accuracy of the system. In this offline study, previously recorded EEG data collected during an online experiment with 10 participants from multiple sessions were used. A template matching target identification, with similar models as the task-related component analysis (TRCA), was used for target classification. The spatial filter was generated by the canonical correlation analysis (CCA). When comparing the training models from one session with the same session's data (intra-session) and the model from one session with the data from the other session (inter-session), the accuracies were (94.84%, 94.53%) and (76.67%, 77.34%) for intra-sessions and inter-sessions, respectively. In order to investigate the most reliable configuration for accurate classification, the training data blocks from different sessions (days) were compared interchangeably. In the best training set composition, the participants achieved an average accuracy of 82.66% for models based only on two training blocks from two different sessions. Similarly, at least five blocks were necessary for the average accuracy to exceed 90%. The presented method can further improve cVEP-based BCI performance by reusing previously recorded training data.
本文研究了基于编码调制视觉诱发电位(cVEP)的脑机接口(BCI)中,重复逐块训练过程对分类准确率的影响。基于cVEP的BCI因其自相关特性而广受欢迎。基于cVEP的刺激由特定的编码模式生成,通常是m序列,在各个目标之间进行相移。通常,cVEP分类需要一个特定于受试者的模板(根据用户自己对相同刺激目标预先记录的脑电图响应单独创建),使用相关算法将其与传入的脑电图(EEG)数据进行比较。收集到的用户训练数据量决定了系统的准确性。在这项离线研究中,使用了之前在一项在线实验中从10名参与者的多个会话中收集的脑电图数据。使用与任务相关成分分析(TRCA)类似模型的模板匹配目标识别来进行目标分类。空间滤波器由典型相关分析(CCA)生成。当将一个会话的训练模型与同一会话的数据(会话内)以及一个会话的模型与另一个会话的数据(会话间)进行比较时,会话内和会话间的准确率分别为(94.84%,94.53%)和(76.67%,77.34%)。为了研究准确分类的最可靠配置,对来自不同会话(天数)的训练数据块进行了交替比较。在最佳训练集组成中,参与者仅基于来自两个不同会话的两个训练块的模型平均准确率达到了82.66%。同样,平均准确率超过90%至少需要五个块。所提出的方法可以通过重用之前记录的训练数据进一步提高基于cVEP的BCI性能。