Multiclass classification of motor imagery tasks based on multi-branch convolutional neural network and temporal convolutional network model

Author:

Yu Shiqi12,Wang Zedong1,Wang Fei3,Chen Kai2ORCID,Yao Dezhong45,Xu Peng45,Zhang Yong1,Wang Hesong1,Zhang Tao1245ORCID

Affiliation:

1. Microecology Research Center, Baiyun Branch, Nanfang Hospital, Southern Medical University , Guangzhou 510515 , China

2. Mental Health Education Center and School of Science, Xihua University , Chengdu 610039 , China

3. School of Computer and Software, Chengdu Jincheng College , Chengdu 610097 , China

4. Key Laboratory for Neuroinformation of Ministry of Education , School of Life Science and Technology, , Chengdu 611731 , China

5. University of Electronic Science and Technology of China , School of Life Science and Technology, , Chengdu 611731 , China

Abstract

Abstract Motor imagery (MI) is a cognitive process wherein an individual mentally rehearses a specific movement without physically executing it. Recently, MI-based brain–computer interface (BCI) has attracted widespread attention. However, accurate decoding of MI and understanding of neural mechanisms still face huge challenges. These seriously hinder the clinical application and development of BCI systems based on MI. Thus, it is very necessary to develop new methods to decode MI tasks. In this work, we propose a multi-branch convolutional neural network (MBCNN) with a temporal convolutional network (TCN), an end-to-end deep learning framework to decode multi-class MI tasks. We first used MBCNN to capture the MI electroencephalography signals information on temporal and spectral domains through different convolutional kernels. Then, we introduce TCN to extract more discriminative features. The within-subject cross-session strategy is used to validate the classification performance on the dataset of BCI Competition IV-2a. The results showed that we achieved 75.08% average accuracy for 4-class MI task classification, outperforming several state-of-the-art approaches. The proposed MBCNN-TCN-Net framework successfully captures discriminative features and decodes MI tasks effectively, improving the performance of MI-BCIs. Our findings could provide significant potential for improving the clinical application and development of MI-based BCI systems.

Funder

National Natural Science Foundation of China

Medical Science and Technology Research Fund of Guangdong Province

National Center for Mental Health and Mental Hygiene Prevention and Control and the China Education Development Foundation

Lhasa Science and Technology Program

Key Research and Development Program of Tibet

Publisher

Oxford University Press (OUP)

Subject

Cellular and Molecular Neuroscience,Cognitive Neuroscience

Reference57 articles.

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2. Deep learning techniques for classification of electroencephalogram (EEG) motor imagery (MI) signals: a review;Altaheri;Neural Comput & Applic,2023

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4. Deep learning for EEG motor imagery classification based on multi-layer CNNs feature fusion;Amin;Futur Gener Comput Syst,2019

5. An efficient approach to mental sentiment classification with EEG-based signals using LSTM neural network;Badie;Control and Optimization in Applied Mathematics,2021

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