Abstract :
Driver fatigue has become an important factor to traffic accidents worldwide, and effective detection of driver fatigue has
major significance for public health. The purpose method employs entropy measures for feature extraction from a single
electroencephalogram (EEG) channel. Four types of entropies measures, sample entropy (SE), fuzzy entropy (FE), approximate
entropy (AE), and spectral entropy (PE), were deployed for the analysis of original EEG signal and compared by ten state-of-theart classifiers. Results indicate that optimal performance of single channel is achieved using a combination of channel CP4, feature
FE, and classifier Random Forest (RF). The highest accuracy can be up to 96.6%, which has been able to meet the needs of real
applications. The best combination of channel + features + classifier is subject-specific. In this work, the accuracy of FE as the
feature is far greater than the Acc of other features. The accuracy using classifier RF is the best, while that of classifier SVM with
linear kernel is the worst.The impact of channel selection on the Acc is larger. The performance of various channels is very different.
Keywords :
EEG , Classifiers , Channel , Features