Title :
IMMJPDA versus MHT and Kalman filter with NN correlation: performance comparison
Author :
de Feo, M. ; Graziano, A. ; Miglioli, R. ; Farina, A.
fDate :
4/1/1997 12:00:00 AM
Abstract :
In a tracking problem a radar periodically scans the volume under surveillance and provides detections (plots) that indicate a target presence. Multitarget tracking systems in operational use today generally adopt Kalman filter (KF) techniques (coupled with a manoeuvre detector to introduce some kind of adaptivity), and nearest neighbour (NN) correlation. Today there are two new approaches to the tracking problem, namely: interacting multiple model joint probabilistic data association (IMMJPDA) and multiple hypothesis tracking (MHT) which promise improved tracking performance. The paper provides a performance comparison between these three tracking algorithms in terms of track maintenance probability and tracking errors. The NN + KF algorithm is used as reference because of its widespread use. Results show that MHT is superior to IMMJPDA and, as expected, both perform better than NN + KF; the cost of additional performance is increased, yet feasible, computing power
Keywords :
Kalman filters; correlation methods; filtering theory; radar detection; radar tracking; target tracking; tracking filters; IMMJPDA; Kalman filter; interacting multiple model joint probabilistic data association; manoeuvre detector; multiple hypothesis tracking; nearest neighbour correlation; performance comparison; radar target detection; radar tracking problem; track maintenance probability; tracking algorithms; tracking errors; tracking filter; tracking performance;
Journal_Title :
Radar, Sonar and Navigation, IEE Proceedings -
DOI :
10.1049/ip-rsn:19970976