DocumentCode :
1690625
Title :
A novel local likelihood approach to data fusion in passive target tracking
Author :
Gerbino, Piero ; Ali, Maaruf
Author_Institution :
R. Mil. Coll. of Sci., Shrivenham, UK
fYear :
1999
fDate :
6/21/1905 12:00:00 AM
Firstpage :
42401
Lastpage :
42404
Abstract :
In the class of target tracking of slow time varying targets using bearings only information, it can be inappropriate to use recursive estimation schemes such as the Kalman class of filters. In particular the use of a unimodal Kalman estimator to estimate a target state can produce erratic estimates due to the presence of manuevers. There is a need to produce smooth, optimal estimates of the target state in time in the presence of a maneuver from the target. In all cases these estimates are based on a number of noise corrupted bearing measurements from a number of sensors. Using recursive systems in this situation can be difficult due to poor conditioning and divergence in the solution due to observability problems. In this paper it is suggested that by employing local maximum likelihood estimates, which are smoothed with Gaussian kernels, one can produce a better fit of the bearing data for a target carrying out a maneuver. Results in this paper show that the extended Kalman filter in bearings only passive target tracking reports higher errors than the local likelihood estimation scheme suggested
Keywords :
sensor fusion; Gaussian kernels; bearings only information; data fusion; extended Kalman filter; fusion algorithm; local maximum likelihood estimates; multisensor system; noise corrupted bearing measurements; observability problems; passive target tracking; single sensor model; slow time varying targets; smooth optimal estimates; smoothing approach; stationary sensors;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Target Tracking: Algorithms and Applications (Ref. No. 1999/090, 1999/215), IEE Colloquium on
Conference_Location :
London
Type :
conf
DOI :
10.1049/ic:19990503
Filename :
827248
Link To Document :
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