Kalman-Gain Aided Particle PHD Filter for Multitarget Tracking
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Date
2017-04-05, 2017-10-01, 2019-08-13
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
We propose an efficient sequential Monte Carlo probability hypothesis density (PHD) filter which employs the Kalman-gain approach during weight update to correct predicted particle states by minimizing the mean square error between the estimated measurement and the actual measurement received at a given time in order to arrive at a more accurate posterior. This technique identifies and selects those particles belonging to a particular target from a given PHD for state correction during weight computation. Besides the improved tracking accuracy, fewer particles are required in the proposed approach. Simulation results confirm the improved tracking performance when evaluated with different measures.
Description
Keywords
Bayesian tracking, Kalman gain, multitarget tracking (MTT), particle filter, probability hypothesis density (PHD) filter, sequential Monte Carlo (SMC)
Citation
Daniyan, A., Gong, Y., Lambotharan, S., Feng, P., & Chambers, J. (2017). Kalman-gain aided particle PHD filter for multitarget tracking. IEEE Transactions on Aerospace and Electronic Systems, 53(5), 2251-2265.