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高级机器学习方法在脑机接口中的应用。

Advanced Machine-Learning Methods for Brain-Computer Interfacing.

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2021 Sep-Oct;18(5):1688-1698. doi: 10.1109/TCBB.2020.3010014. Epub 2021 Oct 7.

DOI:10.1109/TCBB.2020.3010014
PMID:32750892
Abstract

The brain-computer interface (BCI) connects the brain and the external world through an information transmission channel by interpreting the physiological information of the brain during thinking activities. The effective classification of electroencephalogram (EEG) signals is the key to improving the performance of the system. To improve the classification accuracy of EEG signals in the BCI system, the transfer learning algorithm and the improved Common Spatial Pattern (CSP) algorithm are combined to construct a data classification model. Finally, the effectiveness of the proposed algorithm is verified. The results show that in actual and imagined movements, the accuracy of the left- and right-hand movements at different speeds is higher than when the speeds are the same. The proposed Adaptive Composite Common Spatial Pattern (ACCSP) and Self Adaptive Common Spatial Pattern (SACSP) algorithms have good classification effects on 5 subjects, with an average classification accuracy rate of 83.58 percent, which is an increase of 6.96 percent compared with traditional algorithms. When the training sample size is 10, the classification accuracy of the ACCSP algorithm is higher than that of the traditional CSP algorithm. The improved CSP algorithm combined with transfer learning embodies a good classification effect in both ACCSP and SACSP. Especially, the performance of SACSP mode is better. Combining the improved CSP algorithm proposed with the CSP-based transfer learning algorithm can improve the classification accuracy of the BCI classifier.

摘要

脑机接口(BCI)通过在思维活动期间解释大脑的生理信息,通过信息传输通道将大脑与外部世界连接起来。有效分类脑电图(EEG)信号是提高系统性能的关键。为了提高 BCI 系统中 EEG 信号的分类精度,将迁移学习算法和改进的共空间模式(CSP)算法相结合,构建数据分类模型。最后,验证了所提出算法的有效性。结果表明,在实际和想象的运动中,不同速度的左手和右手运动的准确性高于速度相同时的准确性。所提出的自适应复合共空间模式(ACCSP)和自适应共空间模式(SACSP)算法对 5 个受试者具有良好的分类效果,平均分类准确率为 83.58%,与传统算法相比提高了 6.96%。当训练样本大小为 10 时,ACCSP 算法的分类精度高于传统的 CSP 算法。与迁移学习相结合的改进 CSP 算法在 ACCSP 和 SACSP 中均体现出良好的分类效果。特别是 SACSP 模式的性能更好。将基于改进的 CSP 算法与基于 CSP 的迁移学习算法相结合,可以提高 BCI 分类器的分类精度。

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