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.
Cite
CITATION STYLE
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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