Abstract
This paper is concerned with the problem of tracking single or multiple targets with multiple nontarget-specific observations (measurements). For such filtering problems with data association uncertainty, a novel feedback control-based particle filter algorithm is introduced. The algorithm is referred to as the probabilistic data association-feedback particle filter (PDA-FPF). The proposed filter is shown to represent a generalization-to the nonlinear non-Gaussian case-of the classical Kalman filter-based probabilistic data association filter (PDAF). One remarkable conclusion is that the proposed PDA-FPF algorithm retains the error-based feedback structure of the classical PDAF algorithm, even in the nonlinear non-Gaussian case. The theoretical results are illustrated with the aid of numerical examples motivated by multiple target tracking (MTT) applications.
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CITATION STYLE
Yang, T., & Mehta, P. G. (2018). Probabilistic Data Association-Feedback Particle Filter for Multiple Target Tracking Applications. Journal of Dynamic Systems, Measurement and Control, Transactions of the ASME, 140(3). https://doi.org/10.1115/1.4037781
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