BMI Based on Movement Intention Detection

The second method utilized for the analysis of brain signals developed in this thesis is described in this chapter. This section includes a description of the principal brain signal’s potentials utilized with the purpose of detecting the mental activity of an individual. Furthermore, a methodology to detect users’ movement intention through the analysis of the event-related desynchronization phenomenon is presented. Finally, the experimental phase performed to validate the approach is described.

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