Human Head Pose and Eye State Based Driver Distraction Monitoring System

Author(s):  
Astha Modak ◽  
Samruddhi Paradkar ◽  
Shruti Manwatkar ◽  
Amol R. Madane ◽  
Ashwini M. Deshpande
Author(s):  
Vassilis G. Kaburlasos ◽  
Chris Lytridis ◽  
Christos Bazinas ◽  
George A. Papakostas ◽  
Abdelwahab Naji ◽  
...  
Keyword(s):  

2020 ◽  
Vol 2020 ◽  
pp. 1-10
Author(s):  
Zuopeng Zhao ◽  
Sili Xia ◽  
Xinzheng Xu ◽  
Lan Zhang ◽  
Hualin Yan ◽  
...  

In view of the fact that the detection of driver’s distraction is a burning issue, this study chooses the driver’s head pose as the evaluation parameter for driving distraction and proposes a driver distraction method based on the head pose. The effects of single regression and classification combined with regression are compared in terms of accuracy, and four kinds of classical networks are improved and trained using 300W-LP and AFLW datasets. The HPE_Resnet50 with the best accuracy is selected as the head pose estimator and applied to the ten-category distracted driving dataset SF3D to obtain 20,000 sets of head pose data. The differences between classes are discussed qualitatively and quantitatively. The analysis of variance shows that there is a statistically significant difference in head posture between safe driving and all kinds of distracted driving at 95% and 90% confidence levels, and the postures of all kinds of driving movements are distributed in a specific Euler angle range, which provides a characteristic basis for the design of subsequent recognition methods. In addition, according to the continuity of human movement, this paper also selects 90 drivers’ videos to analyze the difference in head pose between safe driving and distracted driving frame by frame. By calculating the spatial distance and sample statistics, the results provide the reference point, spatial range, and threshold of safe driving under this driving condition. Experimental results show that the average error of HPE_Resnet50 in AFLW2000 is 6.17° and that there is an average difference of 12.4° to 54.9° in the Euler angle between safe driving and nine kinds of distracted driving on SF3D.


Perception ◽  
1996 ◽  
Vol 25 (3) ◽  
pp. 367-368 ◽  
Author(s):  
Daniel Kersten ◽  
Nikolaus F Troje ◽  
Heinrich H Bülthoff

We show a cylindrical projection of the human head. This projection is ambiguous with respect to head pose. Viewing such a projection produces perceptual competition for a few discrete views.


2013 ◽  
Vol 427-429 ◽  
pp. 1696-1699
Author(s):  
Xiang Yang Liu ◽  
Shao Song Zhu ◽  
Su Qing Wu ◽  
Zhi Wei Shen

For human head pose analysis based on videos, pose is usually estimated on the head patch provided by a tracking module. However, head tracking is very sensitive to the large changes of pose. Therefore, this work locates the head patch in the videos by head detection. Firstly, we use the Adaboost algorithm to detect the human head in the video. Secondly, we present a dimensionality reduction method to process the head patch. Finally, we use the nearest neighbor method to estimate the head pose. The experiment results show: accurate head detecting helps to estimate the head pose. This method can be used for complex conditions of accurate head pose estimation.


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