Title of article :
Driver Drowsiness Detection by Identification of Yawning and Eye Closure
Author/Authors :
Zohoorian Yazdi ، Mina - Iran University of Science and Technology , Soryani ، Mohsen - Iran University of Science and Technology
Pages :
12
From page :
3033
To page :
3044
Abstract :
Today most accidents are caused by drivers’ fatigue, drowsiness and losing attention on the road ahead. In this paper, a system is introduced, using RGB-D cameras to automatically identify drowsiness and give warning. In this system two important modules have been utilized simultaneously to identify the state of driver’s mouth and eyes for detecting drowsiness. At first, using the depth information, the mouth area and its state are identified. Then using CNN networks, to predict whether the eyes are open or closed, a semi-VGG architecture is used .The results of yawning and eyes states detection are integrated to decide whether an alarm should be issued. The results show an accuracy of about 90% which is encouraging.
Keywords :
Active Contour , Driver Drowsiness , Deep Learning , Depth Information , Eyes State , RGB_D , Yawning Detection
Journal title :
International Journal of Automotive Engineering
Serial Year :
2019
Journal title :
International Journal of Automotive Engineering
Record number :
2464657
Link To Document :
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