DSpace Repository

EEG Based Drowsiness Detection Using Relative Band Power and Short-Time Fourier Transform

Show simple item record

dc.contributor.author Krishnan, P.
dc.contributor.author Yaacob, S.
dc.contributor.author Krishnan, A.P.
dc.contributor.author Rizon, M.
dc.contributor.author Ang, C.K.
dc.contributor.author UniKL MSI
dc.date.accessioned 2021-05-28T03:44:29Z
dc.date.available 2021-05-28T03:44:29Z
dc.date.issued 2020
dc.identifier.citation Krishnan, P., Yaacob, S., Krishnan, A.P., Rizon, M., Ang, C.K. EEG based drowsiness detection using relative band power and short-time fourier transform (2020) Journal of Robotics, Networking and Artificial Life, 7 (3), pp. 147-151. DOI: 10.2991/jrnal.k.200909.001 en_US
dc.identifier.uri http://hdl.handle.net/123456789/24935
dc.description This article is index by Scopus en_US
dc.description.abstract Sleeping on the wheels due to drowsiness is one of the major causes of death tolls all over the world. The objective of this research article is to classify drowsiness with alertness based on the Electroencephalogram (EEG) signals using spectral and band power features. A publicly available ULg DROZY database used in this research. Algorithms are developed to extract the five EEG channels from the raw multimodal signal. By using a higher-order Butterworth low pass filter, the high-frequency components above 50 Hz are removed. Another bandpass filter bank separates the raw signals into eight sub-bands, namely delta, theta, low alpha, high alpha, low beta, mid beta, high beta and gamma. During pre-processing step, the signals are segmented into an equal number of frames. An overlap of 50% and a frame duration of 2 s using a rectangular time windowing approach segments the signal into frames. Then, the feature extraction algorithm extracts the relative band power features based on the short-time Fourier transform for each frame. The extracted feature sets are further normalized and labelled as drowsy and alert and then combined to form the final dataset. K-fold cross-validation method is used. The dataset is trained using K-Nearest Neighbor algorithm (KNN) and support vector machine classifiers, and the results are compared. The KNN classifier produces 96.1% (dataset 1) and 95.5% (dataset 2) classification accuracy. en_US
dc.publisher Journal of Robotics, Networking and Artificial Life en_US
dc.title EEG Based Drowsiness Detection Using Relative Band Power and Short-Time Fourier Transform en_US
dc.conference.year 2020 en_US


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account