EEG signals analysis for motor imagery brain computer interface
Abstract
A brain{computer interface is a medium for communication which converts neuronal
signals into commands towards controlling external system. This thesis presented
the process of classifying three motor imagery tasks using EEG signals which can
be further evolved into BCI system that can remotely control external devices. Different
bands are ltered from EEG signals in order to extract di erent frequency
distributed features. These features are used to classify di erent motor imagery
tasks based on SVM and ANN. Experimental results show that SVM carried higher
accuracy (i.e., 80%) compared to other machine learning algorithms where seven
subjects participated in this experiment.