Meta-Learning-based Cross-Dataset Motor Imagery Brain-Computer Interface

被引:0
作者
Kim, Jun-Mo [1 ]
Bak, Soyeon [1 ]
Nam, Hyeonyeong [1 ]
Choi, WooHyeok [1 ]
Kam, Tae-Eui [1 ]
机构
[1] Korea Univ, Dept Artificial Intelligence, Seoul, South Korea
来源
2024 12TH INTERNATIONAL WINTER CONFERENCE ON BRAIN-COMPUTER INTERFACE, BCI 2024 | 2024年
基金
新加坡国家研究基金会;
关键词
Brain-Computer Interface; Electroencephalogram; Motor Imagery; Meta Learning; Transfer Learning; Cross-dataset;
D O I
10.1109/BCI60775.2024.10480445
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Motor Imagery Brain-Computer Interface (MI-BCI) facilitates human to communicate with computers or machines using brain signals, such as electroencephalography (EEG), induced by the imagination of body movements. However, acquiring sufficient data for training reliable classification model is often time-consuming and impractical. Consequently, recent studies have shifted focus to subject-independent EEG classification, leveraging data from other subjects by using methodologies like transfer learning or meta-learning. However, most of the studies exploit the subjects within the same dataset, which might raise challenges especially when data from other subjects are scarce or inaccessible. To address this issue, we propose a meta-learning-based cross-dataset transfer learning for MI EEG classification. We first extract informative knowledge from the source dataset based on the meta-learning framework. We then leverage the extracted knowledge (or meta-parameters) to enhance the classification performance of the target dataset. This method leverages the BCI Competition IV-2a dataset as the source and the KU and GIST datasets as the target dataset, respectively. Our experimental results indicate that the proposed method enhances MI EEG classification performance compared to conventional subject-dependent scenarios.
引用
收藏
页数:4
相关论文
共 25 条
[1]   Deep learning for motor imagery EEG-based classification: A review [J].
Al-Saegh, Ali ;
Dawwd, Shefa A. ;
Abdul-Jabbar, Jassim M. .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2021, 63
[2]   A Review of Hybrid Brain-Computer Interface Systems [J].
Amiri, Setare ;
Fazel-Rezai, Reza ;
Asadpour, Vahid .
ADVANCES IN HUMAN-COMPUTER INTERACTION, 2013, 2013
[3]  
Brunner C., 2008, Graz University of Technology, V16, P1
[4]   EEG datasets for motor imagery brain-computer interface [J].
Cho, Hohyun ;
Ahn, Minkyu ;
Ahn, Sangtae ;
Kwon, Moonyoung ;
Jun, Sung Chan .
GIGASCIENCE, 2017, 6 (07) :1-8
[5]   Brain-computer interfaces in neurological rehabilitation [J].
Daly, Janis J. ;
Wolpaw, Jonathan R. .
LANCET NEUROLOGY, 2008, 7 (11) :1032-1043
[6]   Brain Computer Interfaces, a Review [J].
Fernando Nicolas-Alonso, Luis ;
Gomez-Gil, Jaime .
SENSORS, 2012, 12 (02) :1211-1279
[7]  
Finn C, 2017, PR MACH LEARN RES, V70
[8]   Noninvasive Electroencephalogram Based Control of a Robotic Arm for Writing Task Using Hybrid BCI System [J].
Gao, Qiang ;
Dou, Lixiang ;
Belkacem, Abdelkader Nasreddine ;
Chen, Chao .
BIOMED RESEARCH INTERNATIONAL, 2017, 2017
[9]   Generalizable Movement Intention Recognition with Multiple Heterogeneous EEG Datasets [J].
Gu, Xiao ;
Han, Jinpei ;
Yang, Guang-Zhong ;
Lo, Benny .
2023 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2023), 2023, :9858-9864
[10]   META-EEG: Meta-learning-based class-relevant EEG representation learning for zero-calibration brain-computer interfaces [J].
Han, Ji-Wung ;
Bak, Soyeon ;
Kim, Jun-Mo ;
Choi, Woohyeok ;
Shin, Dong-Hee ;
Son, Young-Han ;
Kam, Tae-Eui .
EXPERT SYSTEMS WITH APPLICATIONS, 2024, 238