A deep neural network with subdomain adaptation for motor imagery brain-computer interface

被引:12
作者
Zheng, Minmin [1 ,2 ]
Yang, Banghua [1 ]
机构
[1] Shanghai Univ, Res Ctr Brain Comp Engn, Sch Mechatron Engn & Automat, Shanghai, Peoples R China
[2] Putian Univ, Sch Mech & Elect Engn, Putian, Fujian, Peoples R China
基金
国家重点研发计划; 中国国家自然科学基金;
关键词
Motor imagery (MI); Transfer learning; Local maximum mean discrepancy (LMMD); Distance within each class (DWC); Distance between classes within each domain (DBCWD); EEG; CLASSIFICATION;
D O I
10.1016/j.medengphy.2021.08.006
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Background: The nonstationarity problem of EEG is very serious, especially for spontaneous signals, which leads to the poor effect of machine learning related to spontaneous signals, especially in related tasks across time, which correspondingly limits the practical use of brain-computer interface (BCI). Objective: In this paper, we proposed a new transfer learning algorithm, which can utilize the labeled motor imagery (MI) EEG data at the previous time to achieve better classification accuracies for a small number of labeled EEG signals at the current time. Methods: We introduced an adaptive layer into the full connection layer of a deep convolution neural network. The objective function of the adaptive layer was designed to minimize the Local Maximum Mean Discrepancy (LMMD) and the prediction error while minimizing the distance within each class (DWC) and maximizing the distance between classes within each domain (DBCWD). We verified the effectiveness of the proposed algorithm on two public datasets. Results: The classification accuracy of the proposed algorithm was higher than other comparison algorithms, and the paired t-test results also showed that the performance of the proposed algorithm was significantly different from that of other algorithms. The results of the confusion matrix and feature visualization showed the effectiveness of the proposed algorithm. Conclusion: Experimental results showed that the proposed algorithm can achieve higher classification accuracy than other algorithms when there was only a small amount of labeled MI EEG data at the current time. It can be promising to be applied to the field of BCI.
引用
收藏
页码:29 / 40
页数:12
相关论文
共 49 条
[1]   Emotions Recognition Using EEG Signals: A Survey [J].
Alarcao, Soraia M. ;
Fonseca, Manuel J. .
IEEE TRANSACTIONS ON AFFECTIVE COMPUTING, 2019, 10 (03) :374-393
[2]  
Ang KK, 2008, IEEE IJCNN, P2390, DOI 10.1109/IJCNN.2008.4634130
[3]  
[Anonymous], 2023, Signal Process
[4]   Measuring neurophysiological signals in aircraft pilots and car drivers for the assessment of mental workload, fatigue and drowsiness [J].
Borghini, Gianluca ;
Astolfi, Laura ;
Vecchiato, Giovanni ;
Mattia, Donatella ;
Babiloni, Fabio .
NEUROSCIENCE AND BIOBEHAVIORAL REVIEWS, 2014, 44 :58-75
[5]   Deep Learning and Its Applications in Biomedicine [J].
Cao, Chensi ;
Liu, Feng ;
Tan, Hai ;
Song, Deshou ;
Shu, Wenjie ;
Li, Weizhong ;
Zhou, Yiming ;
Bo, Xiaochen ;
Xie, Zhi .
GENOMICS PROTEOMICS & BIOINFORMATICS, 2018, 16 (01) :17-32
[6]   Decoding multiclass motor imagery EEG from the same upper limb by combining Riemannian geometry features and partial least squares regression [J].
Chu, Yaqi ;
Zhao, Xingang ;
Zou, Yijun ;
Xu, Weiliang ;
Song, Guoli ;
Han, Jianda ;
Zhao, Yiwen .
JOURNAL OF NEURAL ENGINEERING, 2020, 17 (04)
[7]   Motor Imagery EEG Classification Based on Kernel Hierarchical Extreme Learning Machine [J].
Duan, Lijuan ;
Bao, Menghu ;
Cui, Song ;
Qiao, Yuanhua ;
Miao, Jun .
COGNITIVE COMPUTATION, 2017, 9 (06) :758-765
[8]  
Ghifary M, 2014, LECT NOTES ARTIF INT, V8862, P898, DOI 10.1007/978-3-319-13560-1_76
[9]  
Gretton A, 2007, ADV NEURAL INF PROCE, V1, P513
[10]   The role and limitations of EEG-based depth of anaesthesia monitoring in theatres and intensive care [J].
Hajat, Z. ;
Ahmad, N. ;
Andrzejowski, J. .
ANAESTHESIA, 2017, 72 :38-47