Title :
Weighted V-disparity approach for obstacles localization in highway environments
Author :
Fakhfakh, Nadim ; Gruyer, Dominique ; Aubert, Didier
Author_Institution :
LIVIC Unit, French Inst. of Sci. & Technol. for Transp., Dev. & Networks, Versailles, France
Abstract :
The employment of embedded passive sensors in order to perceive environment for reducing the accident risk level is a tendency of intelligent vehicles research. From such sensors, one can extract useful informations which can assist the driver to identify hazardous situations. While safety improvement is a substantial requirement for driving assistance, localizing and tracking obstacles in complex road environment became an important task. One promising approach is to use the V-disparity based on the stereovision technique. It is a cumulative space estimated from the disparity image. We propose a sound framework and a complete system based on a real-time stereovision for detection, 3D localization and tracking of dynamic obstacles in highway environment. The main contribution we propose is the improvement of the V-disparity approach by extending the basic approach by merging it with a confidence term. This consists on weighting each pixel in the V-disparity space according to a confidence value which measures the probability of associating a pair of pixels. Furthermore, we propose a tracking system which is based on the belief theory. The tracking task is done on the image space which takes into account uncertainties, handles conflicts, and automatically dealt with targets appearance and disappearce as well as their spatial and temporal propogation. Extensive experiments on simulated and real dataset demonstrate the effectiveness and the robustness of the weighted V-disparity approach.
Keywords :
automated highways; belief maintenance; driver information systems; image retrieval; image sensors; object detection; object tracking; probability; risk management; road accidents; stereo image processing; 3D dynamic obstacle localization; 3D dynamic obstacle tracking; accident risk level reduction; belief theory; complex road environment; confidence term; cumulative space estimation; disparity image; driver assistance; embedded passive sensors; hazardous situation identification; highway environments; image space; information extraction; intelligent vehicles research; probability measurement; spatial propagation; stereovision technique; temporal propagation; weighted V-disparity approach; Cameras; Equations; Estimation; Roads; Sensors; Target tracking; Vehicles;
Conference_Titel :
Intelligent Vehicles Symposium (IV), 2013 IEEE
Conference_Location :
Gold Coast, QLD
Print_ISBN :
978-1-4673-2754-1
DOI :
10.1109/IVS.2013.6629641