Title :
A new confidence estimator for vehicle tracking based on a generalization of Bayes filtering
Author :
Altendorfer, R. ; Matzka, S.
Author_Institution :
Driver Assistance Syst., TRW Automotive, Koblenz, Germany
Abstract :
In safety-critical driver assistance systems such as automatic emergency braking that require the estimation of the vehicle´s environment usually a measure of confidence or probability of existence for tracked objects is required. Its purpose is to distinguish real objects from spurious objects based on artifacts within the measurement or tracking process in order to reduce the number of erroneous deployments (false alarms). We review and assess existing approaches of obtaining such measures. We propose a new method of computing a probability of existence by relaxing the underlying assumption of a Bayes filter which leads to a novel estimation algorithm for a probability of existence. The benefits of this approach compared to a standard Bayes filter are illustrated and corroborated by a numerical study using experimental data.
Keywords :
Bayes methods; driver information systems; filtering theory; object tracking; road safety; Bayes filtering generalization; automatic emergency braking; confidence estimator; measurement process; object tracking process; real objects; safety-critical driver assistance systems; spurious objects; vehicle environment estimation; vehicle tracking; Bayesian methods; Kinematics; Markov processes; Probabilistic logic; Radar tracking; Road vehicles; Tracking;
Journal_Title :
Intelligent Transportation Systems Magazine, IEEE
DOI :
10.1109/MITS.2012.2217572