Title of article :
A comparative analysis on driver drowsiness detection using CNN
Author/Authors :
Naren Thiruvalar, V Department of Instrumentation and Control Systems Engineering - PSG College of Technology - Coimbatore, India , Vimal, E Department of Instrumentation and Control Systems Engineering - PSG College of Technology - Coimbatore, India
Abstract :
The main objective of this project is to detect driver’s drowsiness and alert the driver which is an
important precautionary measure in order to avoid accidents. Here two different algorithms based
on Convolution Neural Network (CNN) were applied and the results were compared respectively.
“Highway Hypnosis” is a serious issue to be addressed while driving especially on highways. Drivers
who travel on highways continuously for more than 3 hours must be aware of this serious problem. If
there is proper knowledge of it, fatalities would be drastically reduced. In this project, a dedicated
detection coupled with an alarm system is provided to alert the driver in case of drowsiness. CNN
is used since it is very effective in analyzing images and videos. In this project, a live video feed is
used to detect drowsiness by suitable algorithms.
Keywords :
CNN , Drowsiness Detection , Viola-Jones , PERCLOS
Journal title :
International Journal of Nonlinear Analysis and Applications