Domain Adaptation with Source Selection for Motor-Imagery based BCI

被引:29
作者
Jeon, Eunjin [1 ]
Ko, Wonjun [1 ]
Suk, Heung-Il [1 ]
机构
[1] Korea Univ, Dept Brain & Cognit Engn, Anam Ro 145, Seoul 02841, South Korea
来源
2019 7TH INTERNATIONAL WINTER CONFERENCE ON BRAIN-COMPUTER INTERFACE (BCI) | 2019年
关键词
Brain-Computer Interface; Electroencephalogram (EEG); Motor Imagery; Deep Learning; Domain Adaptation; Transfer Learning;
D O I
10.1109/iww-bci.2019.8737340
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Recent successes of deep learning methods in various applications have inspired BCI researchers for their use in EEG classification. However, data insufficiency and high intra- and inter-subject variabilities hinder from taking their advantage of discovering complex patterns inherent in data, which can be potentially useful to enhance EEG classification accuracy. In this paper, we devise a novel framework of training a deep network by adapting samples of other subjects as a means of domain adaptation. Assuming that there are EEG trials of motor-imagery tasks from multiple subjects available, we first select a subject whose EEG signal characteristics are similar to the target subject based on their power spectral density in resting-state EEG signals. We then use EEG signals of both the selected subject (called a source subject) and the target subject jointly in training a deep network. Rather than training a single path network, we adopt a multi-path network architecture, where the shared bottom layers are used to discover common features for both source and target subjects, while the upper layers branch out into (1) source-target subject identification, (2) label prediction optimized for a source subject, and (3) label prediction optimized for a target subject. Based on our experimental results over the BCI Competition IV-IIa dataset, we validated the effectiveness of the proposed framework in various aspects.
引用
收藏
页码:134 / 137
页数:4
相关论文
共 21 条
[1]  
ANG KK, 2008, IEEE IJCNN, P2390, DOI DOI 10.1109/IJCNN.2008.4634130
[2]  
Bashivan P., 2015, Learning Representations from EEG with Deep Recurrent-Convolutional Neural Networks
[3]   Neurophysiological predictor of SMR-based BCI performance [J].
Blankertz, Benjamin ;
Sannelli, Claudia ;
Haider, Sebastian ;
Hammer, Eva M. ;
Kuebler, Andrea ;
Mueller, Klaus-Robert ;
Curio, Gabriel ;
Dickhaus, Thorsten .
NEUROIMAGE, 2010, 51 (04) :1303-1309
[4]  
Brunner C., 2008, Institute for Knowledge Discovery (Laboratory of Brain-Computer Interfaces), V16
[5]   Unsupervised domain adaptation techniques based on auto-encoder for non-stationary EEG-based emotion recognition [J].
Chai, Xin ;
Wang, Qisong ;
Zhao, Yongping ;
Liu, Xin ;
Bai, Ou ;
Li, Yongqiang .
COMPUTERS IN BIOLOGY AND MEDICINE, 2016, 79 :205-214
[6]  
Ganin Y, 2016, J MACH LEARN RES, V17
[7]  
Gao, 2018, bioRxiv 299859, DOI DOI 10.1101/299859
[8]  
Graimann B, 2010, FRONT COLLECT, P1, DOI 10.1007/978-3-642-02091-9_1
[9]   Transfer Learning in Brain-Computer Interfaces [J].
Jayaram, Vinay ;
Alamgir, Morteza ;
Altun, Yasemin ;
Schoelkopf, Bernhard ;
Grosse-Wentrup, Moritz .
IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE, 2016, 11 (01) :20-31
[10]  
Ko W, 2018, 2018 6TH INTERNATIONAL CONFERENCE ON BRAIN-COMPUTER INTERFACE (BCI), P195