Abstract

Driver drowsiness is a major cause of fatal accidents throughout the world. Recently, some studies have investigated steering wheel grip force-based alternative methods for detecting driver drowsiness. In this study, a driver drowsiness detection system was developed by investigating the electromyography (EMG) signal of the muscles involved in steering wheel grip during driving. The EMG signal was measured from the forearm position of the driver during a one-hour interactive driving task. Additionally, the participant’s drowsiness level was also measured to investigate the relationship between muscle activity and driver’s drowsiness level. Frequency domain analysis was performed using the short-time Fourier transform (STFT) and spectrogram to assess the frequency response of the resultant signal. An EMG signal magnitude-based driver drowsiness detection and alertness algorithm is also proposed. The algorithm detects weak muscle activity by detecting the fall in EMG signal magnitude due to an increase in driver drowsiness. The previously presented microneedle electrode (MNE) was used to acquire the EMG signal and compared with the signal obtained using silver-silver chloride (Ag/AgCl) wet electrodes. The results indicated that during the driving task, participants’ drowsiness level increased while the activity of the muscles involved in steering wheel grip decreased concurrently over time. Frequency domain analysis showed that the frequency components shifted from the high to low-frequency spectrum during the one-hour driving task. The proposed algorithm showed good performance for the detection of low muscle activity in real time. MNE showed highly comparable results with dry Ag/AgCl electrodes, which confirm its use for EMG signal monitoring. The overall results indicate that the presented method has good potential to be used as a driver’s drowsiness detection and alertness system.

Highlights

  • Drowsiness is defined as a natural tendency to fall asleep

  • microneedle electrode (MNE) and compared with the signal acquired by the Ag/AgCl electrode

  • The of 14 amplitude of the signal during a strong grip was higher as compared with a weak8grip, which is due to the potential difference generated due to the contraction and relaxation thethe targeted muscles during gripgrip action

Read more

Summary

Introduction

Drowsiness is defined as a natural tendency to fall asleep. The transition from awake to asleep is recognized as sleep onset (SO) [1], commonly known as drowsiness. Driver drowsiness results in over 20% of road accidents [2,3], reported as one of the leading causes of road fatalities. The most common factors associated with driver drowsiness are sleep deprivation, duration of driving, monotonous environments, drug and alcohol use, and chronic sleepiness [4]. Another factor associated with a road accident is risky driving behaviors by young drivers. Watling studied the behavior of young drivers who continue to drive while drowsy [5]. It was reported that a large number of drivers (70–73%) choose to drive even though they were aware of their increased level of drowsiness

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call