Title :
Suboptimal joint probabilistic data association
Author :
Roecker, J.A. ; Phillis, G.I.
Author_Institution :
IBM Corp., Boulder, CO, USA
fDate :
4/1/1993 12:00:00 AM
Abstract :
A significant problem in multiple target tracking is the hit-to-track data association. A hit is a received signal from a target or background clutter which provides positional information. If an incorrect hit is associated with a track, that track could diverge and terminate. Prior methods for this data association problem include various optimal and suboptimal two-dimensional assignment algorithms which make hit-to-track associations. Another method is to assign a weight for the reasonable hits and use a weighted centroid of those hits to update the track. The method of weighting the hits is known as joint probabilistic data association (JPDA). The authors review the JPDA approach and a simple ad hoc approximation and then introduce a new suboptimal JPDA algorithm. Examples which compare an optimal two-dimensional assignment algorithm with the ad hoc and the new suboptimal JPDA formulation are given
Keywords :
clutter; filtering and prediction theory; probability; sensor fusion; signal detection; tracking; background clutter; hit-to-track data association; joint probabilistic data association; multiple target tracking; suboptimal two-dimensional assignment algorithms; weighted centroid; Approximation algorithms; Clutter; Distributed processing; Doppler radar; Optical filters; Position measurement; Probability; Radar tracking; Target tracking; Velocity measurement;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on