Abstract:
The use of brain-machine interfaces in combination with robotic exoskeletons is usually
based on the analysis of the changes in power that some brain rhythms experience
during a motion event. However, this variation in power is frequently obtained through
frequency filtering and power estimation using the Fourier analysis. This paper explores
the decomposition of the brain rhythms based on the Empirical Mode Decomposition,
as an alternative for the analysis of electroencephalographic (EEG) signals, due to its
adaptive capability to the local oscillations of the data, showcasing it as a viable tool for
future BMI algorithms based on motor related events.