Optimum Allocation Aided Naïve Bayes Based Learning Process for the Detection of MI Tasks

This chapter presents a reliable and robust analysis system that can automatically detect motor imagery (MI) based EEG signals for the development of brain–computer interface (BCI) systems.

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