Research Article

Implementation of a Four-Class Motor Imagery Brain Computer Interface Using Long Short-Term Memory Neural Network

Hao-Teng Hsu 1 * , Kuo-Kai Shyu 1, Po-Lei Lee 1
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1 Department of Electrical Engineering, National Central University, No. 300, Jhongda Rd., Jongli District, Taoyuan City 32001, Taiwan* Corresponding Author
International Journal of Clinical Medicine and Bioengineering, 2(1), March 2022, 27-32, https://doi.org/10.35745/ijcmb2022v02.01.0005
Published: 30 March 2022
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ABSTRACT

We have developed multi-channel dry-electrode electroencephalography (EEG) system to implement a brain computer interface (BCI) and discriminate four-class motor imagery signals. The EEG channels recorded from Fz, F3, F4, C3, Cz, C4, P3, and P4 positions, according to the international 10‒20 EEG system, were acquired and wirelessly transmitted to a personal computer. Five subjects were recruited to perform right hand, left hand, right foot, and left foot imagery movements with 60 trials in each movement type. EEG data were segmented into epochs from 0 to 8 s and anchored to time points of imagery movement cues. The segmented EEG epochs were pre-processed using the Morlet wavelet. A long short-term memory (LSTM) neural network with 64 LSTM cells was constructed to discriminate EEG signals recorded from different imagery movements. Among total EEG epochs, 80% were randomly chosen as training data and the rest 20% were used as validation data. The detection accuracy reached 89%.

CITATION (APA)

Hsu, H.-T., Shyu, K.-K., & Lee, P.-L. (2022). Implementation of a Four-Class Motor Imagery Brain Computer Interface Using Long Short-Term Memory Neural Network. International Journal of Clinical Medicine and Bioengineering, 2(1), 27-32. https://doi.org/10.35745/ijcmb2022v02.01.0005