Title :
Look at the Driver, Look at the Road: No Distraction! No Accident!
Author :
Rezaei, Mahdi ; Klette, Reinhard
Author_Institution :
Univ. of Auckland, Auckland, New Zealand
Abstract :
The paper proposes an advanced driver-assistance system that correlates the driver´s head pose to road hazards by analyzing both simultaneously. In particular, we aim at the prevention of rear-end crashes due to driver fatigue or distraction. We contribute by three novel ideas: Asymmetric appearance-modeling, 2D to 3D pose estimation enhanced by the introduced Fermat-point transform, and adaptation of Global Haar (GHaar) classifiers for vehicle detection under challenging lighting conditions. The system defines the driver´s direction of attention (in 6 degrees of freedom), yawning and head-nodding detection, as well as vehicle detection, and distance estimation. Having both road and driver´s behaviour information, and implementing a fuzzy fusion system, we develop an integrated framework to cover all of the above subjects. We provide real-time performance analysis for real-world driving scenarios.
Keywords :
driver information systems; image classification; object detection; pose estimation; road safety; traffic engineering computing; Fermat-point transform; GHaar classifier; advanced driver-assistance system; asymmetric appearance-modeling; distance estimation; driver attention direction; driver head pose; global Haar classifier; head-nodding detection; lighting conditions; pose estimation; rear-end crash prevention; vehicle detection; yawning detection; Estimation; Face; Roads; Shape; Solid modeling; Vectors; Vehicles; 2D to 3D modelling; Driver behaviour monitoring; Head pose estimation; Road safety; Vehicle detection;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.24