Real time sleep onset detection from single channel EEG signal using block sample entropy

Özet

In recent years, driver's temporary state has been one in each of the foremost causes of road accidents and would possibly lead to severe physical damaging, mortality and necessary and noticeable economic losses. Maximum road accidents possible to avoided, if possible, to properly monitored driver's drowsiness and a system are given warnings. In this work, a simple and inexpensive method has been offered to detect driver's drowsiness or sleep onset detection with single channel EEG signal analysis. The key novelty of this work is to identify the sleep onset detection from a publicly available graph signal dataset by exploitation only one feature, simply implementable filter in any microcontroller device or smartphone and a threshold based mostly classification. Since, threshold-based classification techniques don't need to train the classifier, hence, new subject adaptation is comparatively easier and real time implementation is more feasible. This novel approach can be easily implemented in smartphone to design and expand a drowsiness detection and alarming system for vehicle's driver. On a variety of subjects, the experimental results show 95.68% accuracy. © 2020 Published under licence by IOP Publishing Ltd.

Açıklama

2nd International Scientific Conference of Al-Ayen University, ISCAU 2020 -- 15 July 2020 through 17 July 2020 -- -- 165187

Anahtar Kelimeler

Block Sample Entropy, Drowsiness, Electroencephalography, Sleep Onset

Kaynak

IOP Conference Series: Materials Science and Engineering

WoS Q Değeri

Scopus Q Değeri

N/A

Cilt

928

Sayı

3

Künye