Motor task-to-task transfer learning for motor imagery brain-computer interfaces

被引:1
作者
Gwon, Daeun [1 ]
Ahn, Minkyu [1 ,2 ]
机构
[1] Handong Global Univ, Dept Comp Sci & Elect Engn, Pohang 37554, South Korea
[2] Handong Global Univ, Sch Comp Sci & Elect Engn, Pohang 37554, South Korea
基金
新加坡国家研究基金会;
关键词
Brain-computer interface; Motor imagery; Motor execution; Motor observation; Transfer learning; User-centered design; Task-to-task transfer; PERFORMANCE; CLASSIFICATION;
D O I
10.1016/j.neuroimage.2024.120906
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Motor imagery (MI) is one of the popular control paradigms in the non-invasive brain-computer interface (BCI) field. MI-BCI generally requires users to conduct the imagination of movement (e.g., left or right hand) to collect training data for generating a classification model during the calibration phase. However, this calibration phase is generally time-consuming and tedious, as users conduct the imagination of hand movement several times without being given feedback for an extended period. This obstacle makes MI-BCI non user-friendly and hinders its use. On the other hand, motor execution (ME) and motor observation (MO) are relatively easier tasks, yield lower fatigue than MI, and share similar neural mechanisms to MI. However, few studies have integrated these three tasks into BCIs. In this study, we propose a new task-to-task transfer learning approach of 3-motor tasks (ME, MO, and MI) for building a better user-friendly MI-BCI. For this study, 28 subjects participated in 3-motor tasks experiment, and electroencephalography (EEG) was acquired. User opinions regarding the 3-motor tasks were also collected through questionnaire survey. The 3-motor tasks showed a power decrease in the alpha rhythm, known as event-related desynchronization, but with slight differences in the temporal patterns. In the classification analysis, the cross-validated accuracy (within-task) was 67.05 % for ME, 65.93 % for MI, and 73.16 % for MO on average. Consistently with the results, the subjects scored MI (3.16) as the most difficult task compared with MO (1.42) and ME (1.41), with p < 0.05. In the analysis of task-to-task transfer learning, where training and testing are performed using different task datasets, the ME-trained model yielded an accuracy of 65.93 % (MI test), which is statistically similar to the within-task accuracy (p > 0.05). The MO-trained model achieved an accuracy of 60.82 % (MI test). On the other hand, combining two datasets yielded interesting results. ME and 50 % of the MI-trained model (50-shot) classified MI with a 69.21 % accuracy, which outperformed the within-task accuracy (p < 0.05), and MO and 50 % of the MI-trained model showed an accuracy of 66.75 %. Of the low performers with a within-task accuracy of 70 % or less, 90 % (n = 21) of the subjects improved in training with ME, and 76.2 % (n = 16) improved in training with MO on the MI test at 50-shot. These results demonstrate that task-to-task transfer learning is possible and could be a promising approach to building a user-friendly training protocol in MI-BCI.
引用
收藏
页数:10
相关论文
共 76 条
  • [1] Ahn M., 2011, HCI International 2011-Posters' Extended Abstracts, P269, DOI [10.1007/978-3-642-22095-155, DOI 10.1007/978-3-642-22095-155]
  • [2] Editorial: Deep Learning in Brain-Computer Interface
    Ahn, Minkyu
    Jun, Sung Chan
    Yeom, Hong Gi
    Cho, Hohyun
    [J]. FRONTIERS IN HUMAN NEUROSCIENCE, 2022, 16
  • [3] Performance variation in motor imagery brain-computer interface: A brief review
    Ahn, Minkyu
    Jun, Sung Chan
    [J]. JOURNAL OF NEUROSCIENCE METHODS, 2015, 243 : 103 - 110
  • [4] Gamma band activity associated with BCI performance: simultaneous MEG/EEG study
    Ahn, Minkyu
    Ahn, Sangtae
    Hong, Jun H.
    Cho, Hohyun
    Kim, Kiwoong
    Kim, Bong S.
    Chang, Jin W.
    Jun, Sung C.
    [J]. FRONTIERS IN HUMAN NEUROSCIENCE, 2013, 7
  • [5] High Theta and Low Alpha Powers May Be Indicative of BCI-Illiteracy in Motor Imagery
    Ahn, Minkyu
    Cho, Hohyun
    Ahn, Sangtae
    Jun, Sung Chan
    [J]. PLOS ONE, 2013, 8 (11):
  • [6] Deep learning techniques for classification of electroencephalogram (EEG) motor imagery (MI) signals: a review
    Altaheri, Hamdi
    Muhammad, Ghulam
    Alsulaiman, Mansour
    Amin, Syed Umar
    Altuwaijri, Ghadir Ali
    Abdul, Wadood
    Bencherif, Mohamed A.
    Faisal, Mohammed
    [J]. NEURAL COMPUTING & APPLICATIONS, 2023, 35 (20) : 14681 - 14722
  • [7] Hybrid Deep Learning (hDL)-Based Brain-Computer Interface (BCI) Systems: A Systematic Review
    Alzahab, Nibras Abo
    Apollonio, Luca
    Di Iorio, Angelo
    Alshalak, Muaaz
    Iarlori, Sabrina
    Ferracuti, Francesco
    Monteriu, Andrea
    Porcaro, Camillo
    [J]. BRAIN SCIENCES, 2021, 11 (01) : 1 - 37
  • [8] Bamdadian A, 2013, IEEE ENG MED BIO, P2188, DOI 10.1109/EMBC.2013.6609969
  • [9] Riemannian Geometry Applied to BCI Classification
    Barachant, Alexandre
    Bonnet, Stephane
    Congedo, Marco
    Jutten, Christian
    [J]. LATENT VARIABLE ANALYSIS AND SIGNAL SEPARATION, 2010, 6365 : 629 - +
  • [10] Inhibitory mechanisms in motor imagery: disentangling different forms of inhibition using action mode switching
    Bart, Victoria K. E.
    Koch, Iring
    Rieger, Martina
    [J]. PSYCHOLOGICAL RESEARCH-PSYCHOLOGISCHE FORSCHUNG, 2021, 85 (04): : 1418 - 1438