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A hybrid BCI based on EEG and fNIRS signals improves the performance of decoding motor imagery of both force and speed of hand clenching

机译:基于EEG和fNIRS信号的混合BCI提高了手握紧力和速度的运动图像解码性能

摘要

Objective. In order to increase the number of states classified by a brain-computer interface (BCI), we utilized a motor imagery task where subjects imagined both force and speed of hand clenching. Approach. The BCI utilized simultaneously recorded electroencephalographic (EEG) and functional near-infrared spectroscopy (fNIRS) signals. The time-phase-frequency feature was extracted from EEG, whereas the HbD [the difference of oxy-hemoglobin (HbO) and deoxyhemoglobin (Hb)] feature was used to improve the classification accuracy of fNIRS. The EEG and fNIRS features were combined and optimized using the joint mutual information (JMI) feature selection criterion; then the extracted features were classified with the extreme learning machines (ELMs). Main results. In this study, the averaged classification accuracy of EEG signals achieved by the time-phase-frequency feature improved by 7%, to 18%, more than the single-type feature, and improved by 15% more than common spatial pattern (CSP) feature. The HbD feature of fNIRS signals improved the accuracy by 1%, to 4%, more than Hb, HbO, or HbT (total hemoglobin). The EEG-fNIRS feature for decoding motor imagery of both force and speed of hand clenching achieved an accuracy of 89% +/- 2%, and improved the accuracy by 1% to 5% more than the sole EEG or fNIRS feature. Significance. Our novel motor imagery paradigm improves BCI performance by increasing the number of extracted commands. Both the time-phase-frequency and the HbD feature improve the classification accuracy of EEG and fNIRS signals, respectively, and the hybrid EEG-fNIRS technique achieves a higher decoding accuracy for two-class motor imagery, which may provide the framework for future multi-modal online BCI systems.
机译:目的。为了增加通过脑机接口(BCI)分类的状态的数量,我们利用了运动成像任务,受试者可以想象握紧力和速度。方法。 BCI利用同时记录的脑电图(EEG)和功能性近红外光谱(fNIRS)信号。从EEG中提取时相频率特征,而HbD [氧合血红蛋白(HbO)与脱氧血红蛋白(Hb)的差]特征被用于提高fNIRS的分类准确性。使用联合互信息(JMI)特征选择标准对EEG和fNIRS特征进行组合和优化。然后使用极限学习机(ELM)对提取的特征进行分类。主要结果。在这项研究中,由时相频率特征实现的EEG信号的平均分类精度提高了7%,比单类型特征提高了18%,比普通空间模式(CSP)提高了15%特征。 fNIRS信号的HbD功能比Hb,HbO或HbT(总血红蛋白)提高了1%到4%的准确性。与单独的EEG或fNIRS功能相比,用于解码手握紧力和速度的运动图像的EEG-fNIRS功能实现了89%+/- 2%的精度,并且将准确性提高了1%至5%。意义。我们新颖的运动图像范例通过增加提取的命令数量来提高BCI性能。时相频率和HbD特性分别提高了EEG和fNIRS信号的分类精度,并且EEG-fNIRS混合技术为两类运动图像实现了更高的解码精度,这可能为未来的多图像提供框架模态在线BCI系统。

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