Title :
Multi-ROI Association and Tracking With Belief Functions: Application to Traffic Sign Recognition
Author :
Boumediene, Mohammed ; Lauffenburger, Jean-Philippe ; Daniel, Jeremie ; Cudel, Christophe ; Ouamri, Abdelaziz
Author_Institution :
Lab. Signaux et Images, Univ. des Sci. et de la Technol. d´Oran Mohamed Boudiaf, Oran, Algeria
Abstract :
This paper presents an object tracking algorithm using belief functions applied to vision-based traffic sign recognition systems. This algorithm tracks detected sign candidates over time in order to reduce false positives due to data fusion formalization. In the first stage, regions of interest (ROIs) are detected and combined using the transferable belief model semantics. In the second stage, the local pignistic probability algorithm generates the associations maximizing the belief of each pairing between detected ROIs and ROIs tracked by multiple Kalman filters. Finally, the tracks are analyzed to detect false positives. Due to a feedback loop between the multi-ROI tracker and the ROI detector, the solution proposed reduces false positives by up to 45%, whereas computation time remains very low.
Keywords :
Kalman filters; belief networks; computer vision; object tracking; probability; belief functions; data fusion formalization; false positives; local pignistic probability algorithm; multiROI association and tracking algorithm; multiple Kalman filters; object tracking algorithm; sign candidates; transferable belief model semantics; vision-based traffic sign recognition systems; Data integration; Detectors; Image edge detection; Kalman filters; Object recognition; Shape; Target tracking; Credal association; data fusion; multitarget tracking; traffic sign recognition (TSR);
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2014.2320536