Validation of Driver Drowsiness Detection Based on Humantenna Effect Using Facial Features

Author(s):  
Mohamed M. El-Barbary ◽  
George. S. Maximous ◽  
Shehab Tarek ◽  
Hany A. Bastawrous
Author(s):  
Bhumika Rajput

When the driver does not get proper sleep, rest or fell sleepy, they sleep while driving and it could be fatal to driver and even the passengers. This issue should have a solution in form of a system in which they can identify drowsiness on the face of a driver and then could ring an alarm so that driver can take necessary actions after that. The detection is done mainly in three steps, in beginning the system should identify the face and then facial features and then followed by eye tracking. In this we use correlation coefficient template. The extracted eye image and template is then matched so that the system can know if the driver is sleeping or not. The blinking is then recognized and if it fall within a certain range, the alarm will go off.


2016 ◽  
Vol 19 (11) ◽  
pp. 1852-1861 ◽  
Author(s):  
Meeyeon Oh ◽  
Yoosoo Jeong ◽  
Kil-Houm Park

Information ◽  
2020 ◽  
Vol 12 (1) ◽  
pp. 3
Author(s):  
Shuang Chen ◽  
Zengcai Wang ◽  
Wenxin Chen

The effective detection of driver drowsiness is an important measure to prevent traffic accidents. Most existing drowsiness detection methods only use a single facial feature to identify fatigue status, ignoring the complex correlation between fatigue features and the time information of fatigue features, and this reduces the recognition accuracy. To solve these problems, we propose a driver sleepiness estimation model based on factorized bilinear feature fusion and a long- short-term recurrent convolutional network to detect driver drowsiness efficiently and accurately. The proposed framework includes three models: fatigue feature extraction, fatigue feature fusion, and driver drowsiness detection. First, we used a convolutional neural network (CNN) to effectively extract the deep representation of eye and mouth-related fatigue features from the face area detected in each video frame. Then, based on the factorized bilinear feature fusion model, we performed a nonlinear fusion of the deep feature representations of the eyes and mouth. Finally, we input a series of fused frame-level features into a long-short-term memory (LSTM) unit to obtain the time information of the features and used the softmax classifier to detect sleepiness. The proposed framework was evaluated with the National Tsing Hua University drowsy driver detection (NTHU-DDD) video dataset. The experimental results showed that this method had better stability and robustness compared with other methods.


2018 ◽  
Vol 12 (2) ◽  
pp. 127-133 ◽  
Author(s):  
Lei Zhao ◽  
Zengcai Wang ◽  
Xiaojin Wang ◽  
Qing Liu

Author(s):  
Renju Rachel Varghese ◽  
Pramod Mathew Jacob ◽  
Joanna Jacob ◽  
Merlin Nissi Babu ◽  
Rupali Ravikanth ◽  
...  

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