Experimental design and signal selection for construction of a robot control system based on EEG signals

  • Yoshioka M
  • Zhu C
  • Imamura K
  • et al.
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Abstract

Aiming to develop an noninvasive BMI control system with EEG (electroencephalogram) signals to control external devices such as prostheses and robots for rehabilitation and/or power support, four different tasks corresponding to different brain excitation degrees are designed. Their EEG spectra are analyzed with short-time fast Fourier transform (STFFT), and their features of mu and beta rhythms corresponding to the different tasks are extracted. The extracted features are used to control a one-joint robot arm and their corresponding results are compared. The results show that the EEG signal when a subject is holding a weight is comparatively more stable than the EEG signals in other tasks such as motor imagery. This implies an effective way for power assist by EEG signals.

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Yoshioka, M., Zhu, C., Imamura, K., Wang, F., Yu, H., Duan, F., & Yan, Y. (2014). Experimental design and signal selection for construction of a robot control system based on EEG signals. Robotics and Biomimetics, 1(1). https://doi.org/10.1186/s40638-014-0022-3

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