Title :
Supervised learning for adaptive interactive multiple model (SLAIMM) tracking
Author_Institution :
Air Force Res. Lab., Wright-Patterson AFB, OH, USA
Abstract :
To improve target tracking algorithms, supervised learning of adaptive interacting multiple model (SLAIMM) is compared to other interacting multiple model (IMM) methods. Based on the classical IMM tracking, a trained adaptive acceleration model is added to the filter bank to track behavior between the fixed model dynamics. The results show that the SLAIMM algorithm 1) improves kinematic track accuracy for a target undergoing acceleration, 2) affords track maintenance through maneuvers, and 3) reduces computational costs by performing off-line learning of system parameters. The SLAIMM method is compared with the classical IMM, the Munir adaptive IMM, and the Maybeck moving-bank multiple-model adaptive estimator (MBMMAE).
Keywords :
adaptive estimation; channel bank filters; learning (artificial intelligence); target tracking; Maybeck moving-bank multiple-model adaptive estimator; Munir adaptive IMM; SLAIMM tracking; adaptive interactive multiple model; classical IMM tracking; filter bank; kinematic track accuracy; off-line learning; supervised learning; target tracking algorithms; track maintenance; trained adaptive acceleration model; Acceleration; Adaptive filters; Computational complexity; Computational efficiency; Filter bank; Kinematics; Radar tracking; Supervised learning; Synthetic aperture radar; Target tracking; Interactive Multiple Model;
Conference_Titel :
Aerospace & Electronics Conference (NAECON), Proceedings of the IEEE 2009 National
Conference_Location :
Dayton, OH
Print_ISBN :
978-1-4244-4494-6
Electronic_ISBN :
978-1-4244-4495-3
DOI :
10.1109/NAECON.2009.5426622