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EEG-FMCNN: A fusion multi-branch 1D convolutional neural network for EEG-based motor imagery classification.
Wang, Wenlong; Li, Baojiang; Wang, Haiyan; Wang, Xichao; Qin, Yuxin; Shi, Xingbin; Liu, Shuxin.
Afiliación
  • Wang W; The School of Electrical Engineering, Shanghai Dianji University, Shanghai, 201306, China.
  • Li B; Intelligent Decision and Control Technology Institute, Shanghai Dianji University, Shanghai, 201306, China.
  • Wang H; The School of Electrical Engineering, Shanghai Dianji University, Shanghai, 201306, China. libj@sdju.edu.cn.
  • Wang X; Intelligent Decision and Control Technology Institute, Shanghai Dianji University, Shanghai, 201306, China. libj@sdju.edu.cn.
  • Qin Y; The School of Electrical Engineering, Shanghai Dianji University, Shanghai, 201306, China.
  • Shi X; Intelligent Decision and Control Technology Institute, Shanghai Dianji University, Shanghai, 201306, China.
  • Liu S; The School of Electrical Engineering, Shanghai Dianji University, Shanghai, 201306, China.
Med Biol Eng Comput ; 62(1): 107-120, 2024 Jan.
Article en En | MEDLINE | ID: mdl-37728715
Motor imagery (MI) electroencephalogram (EEG) signal is recognized as a promising paradigm for brain-computer interface (BCI) systems and has been extensively employed in various BCI applications, including assisting disabled individuals, controlling devices and environments, and enhancing human capabilities. The high-performance decoding capability of MI-EEG signals is a key issue that impacts the development of the industry. However, decoding MI-EEG signals is challenging due to the low signal-to-noise ratio and inter-subject variability. In response to the aforementioned core problems, this paper proposes a novel end-to-end network, a fusion multi-branch 1D convolutional neural network (EEG-FMCNN), to decode MI-EEG signals without pre-processing. The utilization of multi-branch 1D convolution not only exhibits a certain level of noise tolerance but also addresses the issue of inter-subject variability to some extent. This is attributed to the ability of multi-branch architectures to capture information from different frequency bands, enabling the establishment of optimal convolutional scales and depths. Furthermore, we incorporate 1D squeeze-and-excitation (SE) blocks and shortcut connections at appropriate locations to further enhance the generalization and robustness of the network. In the BCI Competition IV-2a dataset, our proposed model has obtained good experimental results, achieving accuracies of 78.82% and 68.41% for subject-dependent and subject-independent modes, respectively. In addition, extensive ablative experiments and fine-tuning experiments were conducted, resulting in a notable 7% improvement in the average performance of the network, which holds significant implications for the generalization and application of the network.
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Texto completo: 1 Base de datos: MEDLINE Asunto principal: Electroencefalografía / Interfaces Cerebro-Computador Idioma: En Revista: Med Biol Eng Comput Año: 2024 Tipo del documento: Article

Texto completo: 1 Base de datos: MEDLINE Asunto principal: Electroencefalografía / Interfaces Cerebro-Computador Idioma: En Revista: Med Biol Eng Comput Año: 2024 Tipo del documento: Article