Game theoretic data association for multi-target tracking with varying number of targets
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Date
2016-06-23, 2016-05-01, 2019-03-27
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IEEE
Abstract
We investigate a game theoretic data association technique for multi-target tracking (MTT) with varying number of targets. The problem of target state-estimate-to-track data association has been considered. We use the SMC-PHD filter to handle the MTT aspect and obtain target state estimates. We model the interaction between target tracks as a game by considering them as players and the set of target state estimates as strategies. Utility functions for the players are defined and a regret-based learning algorithm with a forgetting factor is used to find the equilibrium of the game. Simulation results are presented to demonstrate the performance of the proposed technique.
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Keywords
Multi-target tracking (MTT), data association, game theory, correlated-equilibrium, forgetting factor, regret matching, particle filter, sequential Monte Carlo (SMC), probability hypothesis density (PHD) filter