Institute of Intelligent Control and Robotics, Hangzhou Dianzi University, Hangzhou 310018, China.
Key Laboratory of Brain Machine Collaborative Intelligence of Zhejiang Province, Hangzhou 310018, China.
Math Biosci Eng. 2021 Sep 10;18(6):7919-7935. doi: 10.3934/mbe.2021392.
Hybrid EEG-fNIRS brain-computer interface (HBCI) is widely employed to enhance BCI performance. EEG and fNIRS signals are combined to increase the dimensionality of the information. Time windows are used to select EEG and fNIRS singles synchronously. However, it ignores that specific modal signals have their own characteristics, when the task is stimulated, the information between the modalities will mismatch at the moment, which has a significant impact on the classification performance. Here we propose a novel crossing time windows optimization for mental arithmetic (MA) based BCI. The EEG and fNIRS signals were segmented separately by sliding time windows. Then crossing time windows (CTW) were combined with each one segment from EEG and fNIRS selected independently. Furthermore, EEG and fNIRS features were extracted using Filter Bank Common Spatial Pattern (FBCSP) and statistical methods from each sample. Mutual information was calculated for FBCSP and statistical features to characterize the discrimination of crossing time windows, and the optimal window would be selected based on the largest mutual information. Finally, a sparse structured framework of Fisher Lasso feature selection (FLFS) was designed to select the joint features, and conventional Linear Discriminant Analysis (LDA) was employed to perform classification. We used proposed method for a MA dataset. The classification accuracy of the proposed method is 92.52 ± 5.38% and higher than other methods, which shows the rationality and superiority of the proposed method.
混合 EEG-fNIRS 脑机接口 (HBCI) 被广泛用于提高 BCI 的性能。EEG 和 fNIRS 信号被结合以增加信息的维数。时间窗口用于同步选择 EEG 和 fNIRS 单体。然而,它忽略了特定模态信号具有其自身的特点,当任务受到刺激时,模态之间的信息在瞬间会不匹配,这对分类性能有重大影响。在这里,我们提出了一种新的基于心算 (MA) 的 BCI 的交叉时间窗口优化方法。EEG 和 fNIRS 信号分别通过滑动时间窗口进行分段。然后,将交叉时间窗口 (CTW) 与从 EEG 和 fNIRS 中独立选择的每个分段进行组合。此外,从每个样本中使用滤波组共空间模式 (FBCSP) 和统计方法提取 EEG 和 fNIRS 特征。计算 FBCSP 和统计特征的互信息,以表征交叉时间窗口的区分度,并根据最大互信息选择最佳窗口。最后,设计了稀疏结构 Fisher 拉索特征选择 (FLFS) 框架来选择联合特征,并采用传统的线性判别分析 (LDA) 进行分类。我们使用所提出的方法对 MA 数据集进行了分析。所提出的方法的分类准确率为 92.52 ± 5.38%,高于其他方法,这表明了所提出的方法的合理性和优越性。