DocumentCode
1326175
Title
Probabilistic Analysis of Dynamic Scenes and Collision Risks Assessment to Improve Driving Safety
Author
Laugier, Christian ; Paromtchik, Igor E. ; Perrollaz, Mathias ; Yong, Mao ; Yoder, John-David ; Tay, Christopher ; Mekhnacha, Kamel ; Nègre, Amaury
Author_Institution
INRIA Grenoble Rhone-Alpes, St. Ismier, France
Volume
3
Issue
4
fYear
2011
Firstpage
4
Lastpage
19
Abstract
The article deals with the analysis and interpretation of dynamic scenes typical of urban driving. The key objective is to assess risks of collision for the ego-vehicle. We describe our concept and methods, which we have integrated and tested on our experimental platform on a Lexus car and a driving simulator. The on-board sensors deliver visual, telemetric and inertial data for environment monitoring. The sensor fusion uses our Bayesian Occupancy Filter for a spatio-temporal grid representation of the traffic scene. The underlying probabilistic approach is capable of dealing with uncertainties when modeling the environment as well as detecting and tracking dynamic objects. The collision risks are estimated as stochastic variables and are predicted for a short period ahead with the use of Hidden Markov Models and Gaussian processes. The software implementation takes advantage of our methods, which allow for parallel computation. Our tests have proven the relevance and feasibility of our approach for improving the safety of car driving.
Keywords
Gaussian processes; accident prevention; hidden Markov models; object detection; object tracking; risk management; road safety; road traffic; sensor fusion; traffic engineering computing; Bayesian occupancy filter; Gaussian processes; Lexus car; collision risks assessment; driving safety; driving simulator; dynamic object detection; dynamic object tracking; dynamic scenes; ego-vehicle; environment monitoring; hidden Markov models; probabilistic analysis; sensor fusion; spatio-temporal grid representation; stochastic variables; urban driving; Collision avoidance; Motion control; Probabilistic logic; Risk management; Safety; Sensor fusion;
fLanguage
English
Journal_Title
Intelligent Transportation Systems Magazine, IEEE
Publisher
ieee
ISSN
1939-1390
Type
jour
DOI
10.1109/MITS.2011.942779
Filename
6025208
Link To Document