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EEG-TCNTransformer: A Temporal Convolutional Transformer for Motor Imagery Brain–Computer Interfaces

Anh Hoang Phuc Nguyen, Oluwabunmi Oyefisayo, Maximilian Achim Pfeffer, Sai Ho Ling

2024Signals12 citationsDOIOpen Access PDF

Abstract

In brain–computer interface motor imagery (BCI-MI) systems, convolutional neural networks (CNNs) have traditionally dominated as the deep learning method of choice, demonstrating significant advancements in state-of-the-art studies. Recently, Transformer models with attention mechanisms have emerged as a sophisticated technique, enhancing the capture of long-term dependencies and intricate feature relationships in BCI-MI. This research investigates the performance of EEG-TCNet and EEG-Conformer models, which are trained and validated using various hyperparameters and bandpass filters during preprocessing to assess improvements in model accuracy. Additionally, this study introduces EEG-TCNTransformer, a novel model that integrates the convolutional architecture of EEG-TCNet with a series of self-attention blocks employing a multi-head structure. EEG-TCNTransformer achieves an accuracy of 83.41% without the application of bandpass filtering.

Topics & Concepts

Motor imageryElectroencephalographyBrain–computer interfaceComputer scienceTransformerArtificial intelligenceSpeech recognitionPsychologyNeuroscienceEngineeringElectrical engineeringVoltageEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingFunctional Brain Connectivity Studies