Driver Drowsiness Detection and Alert System
DOI:
https://doi.org//10.32628/CSEIT2173171Keywords:
Eye extraction, Dlib, Facial Extraction, Drowsiness, Machine Learning, EAR, Python, Face Detection.Abstract
Nowadays, accidents occur during drowsy road trips and increase day by day; It is a known fact that many accidents occur due to driver fatigue and sometimes inattention, this research is primarily devoted to maximizing efforts to identify drowsiness. State of the driver under real driving conditions. The aim of driver drowsiness detection systems is to try to reduce these traffic accidents. The secondary data collected focuses on previous research on systems for detecting drowsiness and several methods have been used to detect drowsiness or inattentive driving.Our goal is to provide an interface where the program can automatically detect the driver's drowsiness and detect it in the event of an accident by using the image of a person captured by the webcam and examining how this information can be used to improve driving safety can be used. . a vehicle safety project that helps prevent accidents caused by the driver's sleep. Basically, you're collecting a human image from the webcam and exploring how that information could be used to improve driving safety. Collect images from the live webcam stream and apply machine learning algorithm to the image and recognize the drowsy driver or not.When the driver is sleepy, it plays the buzzer alarm and increases the buzzer sound. If the driver doesn't wake up, they'll send a text message and email to their family members about their situation. Hence, this utility goes beyond the problem of detecting drowsiness while driving. Eye extraction, face extraction with dlib.
References
- A Study of Heart Rate and Brain System Complexity and Their Interaction in Sleep-Deprived Subjects. Kokonozi A.K., Michail E.M., Chouvarda I.C., Maglaveras N.M. Bologna, Italy. : Computers in Cardiology, 2008.
- Effects of partial and total sleep deprivation on driving performance. Peters R.D., Wagner E., Alicandri E., Fox J.E., Thomas M.L., Thorne D.R., Sing H.C., Balwinski S.M. 1999.
- Effect of driving duration and partial sleep deprivation on subsequent alertness and performance of car drivers. Otmani S, Pebayle T, Roge J, Muzet A. 2005.
- TemplateMatching. [Online] Apr 21, 2014 [Cited: Sep 8, 2014.] Real time drowsy driver detection using haarcascade samples. Dr.Suryaprasad J, Sandesh D, Saraswathi V.
- Integrated Approach for Nonintrusive Detection of Driver Drowsiness. Yu, Xun. Duluth : s.n., 2012.
- Rajneesh, “Real Time Drivers Drowsiness Detection and alert System by Measuring EAR,” International Journal of Computer Applications (0975 – 8887) Volume 181 – No. 25, November- 2018 .
- Jay D. Fuletra., “A Survey on Driver’s Drowsiness Detection Techniques” International Journal on Recent and Innovation Trends in Computing and Communication ISSN: 2321-8169 Volume: 1 Issue: 11 ,2013.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT
This work is licensed under a Creative Commons Attribution 4.0 International License.