Dai Yixuan, Zhang Xinman, Chen Zhiqi, Xu Xuebin
MOE Key Lab for Intelligent Networks and Network Security, School of Electronics and Information Engineering, Xi'an Jiaotong University, Xi'an, Shaanxi 710049, China.
Guangdong Xi'an Jiaotong University Academy, No. 3, Daliangdesheng East Road, Foshan, Guangdong 528000, China.
Rev Sci Instrum. 2018 Jul;89(7):074302. doi: 10.1063/1.5006511.
Brain-computer interface (BCI) systems establish a direct communication channel from the brain to an output device. As the basis of BCIs, recognizing motor imagery activities poses a considerable challenge to signal processing due to the complex and non-stationary characteristics. This paper introduces an optimal and intelligent method for motor imagery BCIs. Because of the robustness to noise, wavelet packet decomposition and common spatial pattern (CSP) methods were implemented to reduce the dimensions of preprocessed signals. And a novel and efficient classifier projection extreme learning machine (PELM) was employed to recognize the labels of electroencephalogram signals. Experiments have been performed on the BCI Competition Dataset to demonstrate the superiority of wavelet-CSP in BCI and the outperformance of the PELM-based method. Results show that the average recognition rate of PELM approaches approximately 70%, while the optimal rate of other methods is 72%, whose training time and classification time are relatively longer as 11.00 ms and 11.66 ms, respectively, compared with 4.75 ms and 4.87 ms obtained by using the proposed BCI system.
脑机接口(BCI)系统建立了一条从大脑到输出设备的直接通信通道。作为脑机接口的基础,由于其复杂且非平稳的特性,识别运动想象活动对信号处理提出了相当大的挑战。本文介绍了一种用于运动想象脑机接口的优化智能方法。由于对噪声具有鲁棒性,采用小波包分解和共同空间模式(CSP)方法来降低预处理信号的维度。并且使用了一种新颖高效的分类器——投影极限学习机(PELM)来识别脑电图信号的标签。在脑机接口竞赛数据集上进行了实验,以证明小波 - CSP在脑机接口中的优越性以及基于PELM方法的性能优势。结果表明,PELM的平均识别率接近70%,而其他方法的最佳识别率为72%,与所提出的脑机接口系统分别获得的4.75毫秒和4.87毫秒相比,其他方法的训练时间和分类时间相对较长,分别为11.00毫秒和11.66毫秒。