Title :
Visual Analysis of Eye State and Head Pose for Driver Alertness Monitoring
Author :
Oyini Mbouna, Ralph ; Kong, Seong G. ; Myung-Geun Chun
Author_Institution :
Temple Univ., Philadelphia, PA, USA
Abstract :
This paper presents visual analysis of eye state and head pose (HP) for continuous monitoring of alertness of a vehicle driver. Most existing approaches to visual detection of nonalert driving patterns rely either on eye closure or head nodding angles to determine the driver drowsiness or distraction level. The proposed scheme uses visual features such as eye index (EI), pupil activity (PA), and HP to extract critical information on nonalertness of a vehicle driver. EI determines if the eye is open, half closed, or closed from the ratio of pupil height and eye height. PA measures the rate of deviation of the pupil center from the eye center over a time period. HP finds the amount of the driver´s head movements by counting the number of video segments that involve a large deviation of three Euler angles of HP, i.e., nodding, shaking, and tilting, from its normal driving position. HP provides useful information on the lack of attention, particularly when the driver´s eyes are not visible due to occlusion caused by large head movements. A support vector machine (SVM) classifies a sequence of video segments into alert or nonalert driving events. Experimental results show that the proposed scheme offers high classification accuracy with acceptably low errors and false alarms for people of various ethnicity and gender in real road driving conditions.
Keywords :
computerised monitoring; data visualisation; driver information systems; feature extraction; hidden feature removal; image classification; image sequences; object detection; pose estimation; support vector machines; Euler angles; SVM; continuous vehicle driver alertness monitoring; distraction level; driver drowsiness; driver head movements; eye center; eye closure; head nodding angles; nonalert driving events; nonalert driving patterns; normal driving position; occlusion; pupil activity; pupil center deviation rate; real road driving conditions; support vector machine; video segment sequences; visual detection; visual eye state analysis; visual features; visual head pose analysis; Driver alertness monitoring; driver drowsiness detection; eye state; head pose (HP); support vector machines (SVMs);
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2013.2262098