DocumentCode :
826123
Title :
A neural approach to the assignment algorithm for multiple-target tracking
Author :
Silven, Saul
Author_Institution :
S. Silven & Associates, Escondido, CA, USA
Volume :
17
Issue :
4
fYear :
1992
fDate :
10/1/1992 12:00:00 AM
Firstpage :
326
Lastpage :
332
Abstract :
A neural network is presented for performing data association for multiple-target tracking on an optimal assignment basis, i.e., the sum of likelihood functions of measurement-to-track file associations is optimized. The likelihoods are shown to be derivable from a Kalman filter, which updates and maintains the track files from the measurements assigned by the neural network. Not only are measurements assigned to track files on an optimal basis, but undetected targets and unassigned measurements are identified also. A multiple-target tracking system utilizing the neural network, in conjunction with Kalman filtering, can also automatically delete and initiate track files. The solution to the data association problem, and therefore the design of the neural network, is based on the minimization of a properly defined energy function. Computer simulations indicate the ability of the neural network to converge quickly to the optimal hypothesis under various conditions, provided that the ambiguity in the scenario is not extreme. The computational complexity involved is moderate
Keywords :
Kalman filters; filtering and prediction theory; minimisation; neural nets; tracking; Kalman filter; assignment algorithm; computational complexity; computer simulation; data association; energy function; measurement-to-track file associations; minimization; multiple-target tracking; neural network; optimal assignment; optimal hypothesis; track files; unassigned measurements; Computational complexity; Computer networks; Filtering; Kalman filters; Neural networks; Personal digital assistants; Radar tracking; Sea measurements; Sonar applications; Target tracking;
fLanguage :
English
Journal_Title :
Oceanic Engineering, IEEE Journal of
Publisher :
ieee
ISSN :
0364-9059
Type :
jour
DOI :
10.1109/48.180301
Filename :
180301
Link To Document :
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