Title :
Sensor Fusion for Predicting Vehicles´ Path for Collision Avoidance Systems
Author :
Polychronopoulos, Aris ; Tsogas, Manolis ; Amditis, Angelos J. ; Andreone, Luisa
Author_Institution :
Nat. Tech. Univ. of Athens, Athens
Abstract :
Path prediction is the only way that an active safety system can predict a driver´s intention. In this paper, a model-based description of the traffic environment is presented - both vehicles and infrastructure - in order to provide, in real time, sufficient information for an accurate prediction of the ego-vehicle´s path. The proposed approach is a hierarchical-structured algorithm that fuses traffic environment data with car dynamics in order to accurately predict the trajectory of the ego-vehicle, allowing the active safety system to inform, warn the driver, or intervene when critical situations occur. The algorithms are tested with real data, under normal conditions, for collision warning (CW) and vision-enhancement applications. The results clearly show that this approach allows a dynamic situation and threat assessment and can enhance the capabilities of adaptive cruise control and CW functions by reducing the false alarm rate.
Keywords :
collision avoidance; driver information systems; road safety; sensor fusion; active safety system; adaptive cruise control; collision avoidance systems; collision warning; dynamic situation assessment; hierarchical-structured algorithm; model-based description; path prediction; sensor fusion; threat assessment; traffic environment data; vision-enhancement applications; Collision avoidance; Fuses; Predictive models; Road accidents; Sensor fusion; Testing; Traffic control; Trajectory; Vehicle dynamics; Vehicle safety; Collision warning (CW); Kalman; curvilinear motion model; path prediction; sensor fusion;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2007.903439