A Vision Based System for Monitoring the Loss of Attention in Automotive Drivers
May 13, 2015 Β· Declared Dead Β· π IEEE transactions on intelligent transportation systems (Print)
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Authors
Anirban Dasgupta, Anjith George, S. L. Happy, Aurobinda Routray
arXiv ID
1505.03352
Category
cs.CV: Computer Vision
Citations
132
Venue
IEEE transactions on intelligent transportation systems (Print)
Last Checked
4 months ago
Abstract
On board monitoring of the alertness level of an automotive driver has been a challenging research in transportation safety and management. In this paper, we propose a robust real time embedded platform to monitor the loss of attention of the driver during day as well as night driving conditions. The PERcentage of eye CLOSure (PERCLOS) has been used as the indicator of the alertness level. In this approach, the face is detected using Haar like features and tracked using a Kalman Filter. The Eyes are detected using Principal Component Analysis (PCA) during day time and the block Local Binary Pattern (LBP) features during night. Finally the eye state is classified as open or closed using Support Vector Machines(SVM). In plane and off plane rotations of the drivers face have been compensated using Affine and Perspective Transformation respectively. Compensation in illumination variation is carried out using Bi Histogram Equalization (BHE). The algorithm has been cross validated using brain signals and finally been implemented on a Single Board Computer (SBC) having Intel Atom processor, 1 GB RAM, 1.66 GHz clock, x86 architecture, Windows Embedded XP operating system. The system is found to be robust under actual driving conditions.
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