Literature DB >> 33401114

Adaptive transfer learning for EEG motor imagery classification with deep Convolutional Neural Network.

Kaishuo Zhang1, Neethu Robinson2, Seong-Whan Lee3, Cuntai Guan4.   

Abstract

In recent years, deep learning has emerged as a powerful tool for developing Brain-Computer Interface (BCI) systems. However, for deep learning models trained entirely on the data from a specific individual, the performance increase has only been marginal owing to the limited availability of subject-specific data. To overcome this, many transfer-based approaches have been proposed, in which deep networks are trained using pre-existing data from other subjects and evaluated on new target subjects. This mode of transfer learning however faces the challenge of substantial inter-subject variability in brain data. Addressing this, in this paper, we propose 5 schemes for adaptation of a deep convolutional neural network (CNN) based electroencephalography (EEG)-BCI system for decoding hand motor imagery (MI). Each scheme fine-tunes an extensively trained, pre-trained model and adapt it to enhance the evaluation performance on a target subject. We report the highest subject-independent performance with an average (N=54) accuracy of 84.19% (±9.98%) for two-class motor imagery, while the best accuracy on this dataset is 74.15% (±15.83%) in the literature. Further, we obtain a statistically significant improvement (p=0.005) in classification using the proposed adaptation schemes compared to the baseline subject-independent model.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Keywords:  Brain–computer interface (BCI); Convolutional Neural Network (CNN); Electroencephalography (EEG); Transfer learning

Mesh:

Year:  2020        PMID: 33401114     DOI: 10.1016/j.neunet.2020.12.013

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  7 in total

1.  Motor Imagery EEG Classification Based on Transfer Learning and Multi-Scale Convolution Network.

Authors:  Zhanyuan Chang; Congcong Zhang; Chuanjiang Li
Journal:  Micromachines (Basel)       Date:  2022-06-10       Impact factor: 3.523

2.  Considerate motion imagination classification method using deep learning.

Authors:  Zhaokun Yan; Xiangquan Yang; Yu Jin
Journal:  PLoS One       Date:  2022-10-20       Impact factor: 3.752

3.  Arithmetic Optimization with RetinaNet Model for Motor Imagery Classification on Brain Computer Interface.

Authors:  Areej A Malibari; Fahd N Al-Wesabi; Marwa Obayya; Mimouna Abdullah Alkhonaini; Manar Ahmed Hamza; Abdelwahed Motwakel; Ishfaq Yaseen; Abu Sarwar Zamani
Journal:  J Healthc Eng       Date:  2022-03-24       Impact factor: 2.682

4.  Classification of motor imagery EEG using deep learning increases performance in inefficient BCI users.

Authors:  Navneet Tibrewal; Nikki Leeuwis; Maryam Alimardani
Journal:  PLoS One       Date:  2022-07-22       Impact factor: 3.752

5.  A large EEG dataset for studying cross-session variability in motor imagery brain-computer interface.

Authors:  Jun Ma; Banghua Yang; Wenzheng Qiu; Yunzhe Li; Shouwei Gao; Xinxing Xia
Journal:  Sci Data       Date:  2022-09-01       Impact factor: 8.501

Review 6.  2020 International brain-computer interface competition: A review.

Authors:  Ji-Hoon Jeong; Jeong-Hyun Cho; Young-Eun Lee; Seo-Hyun Lee; Gi-Hwan Shin; Young-Seok Kweon; José Del R Millán; Klaus-Robert Müller; Seong-Whan Lee
Journal:  Front Hum Neurosci       Date:  2022-07-22       Impact factor: 3.473

7.  EEG Dataset for RSVP and P300 Speller Brain-Computer Interfaces.

Authors:  Kyungho Won; Moonyoung Kwon; Minkyu Ahn; Sung Chan Jun
Journal:  Sci Data       Date:  2022-07-08       Impact factor: 8.501

  7 in total

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