Department of Electrical and Electronic Engineering, Federal University of Technology, Minna, Nigeria.
World Journal of Advanced Engineering Technology and Sciences, 2025, 15(01), 1636-1647
Article DOI: 10.30574/wjaets.2025.15.1.0369
Received on 08 March 2025; revised on 17 April 2025; accepted on 19 April 2025
We introduce a novel cardinalized implementation of the Kalman-gain-aided particle probability hypothesis density (KG-SMC-PHD) filter, extending it to form the Kalman-Gain Particle Cardinalized Probability Hypothesis Density (KG-SMC-CPHD) filter. This new approach significantly enhances multi-target tracking by combining the particle-based state correction mechanism with the propagation of both the PHD and target cardinality distribution. Unlike conventional particle filters that require a large number of particles for acceptable performance, our method intelligently corrects selected particles during the weight update stage, resulting in a more accurate posterior with substantially fewer particles. Through comprehensive evaluations on both simulated and experimental datasets, the KG-SMC-CPHD filter demonstrates superior robustness and accuracy, particularly in high-clutter environments and nonlinear target dynamics. Notably, it offers improved cardinality estimation and maintains the computational efficiency and performance advantages of its predecessor, the KG-SMC-PHD filter, making it a powerful tool for advanced multi-target tracking applications.
Multi-Target Tracking; Particle Filter; Cardinalized PHD; Kalman Gain; Sequential Monte Carlo; Passive Radar
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Abdullahi Daniyan. Robust Multi-Target Tracking with a Kalman-Gain CPHD Filter: Simulation and Experimental Validation. World Journal of Advanced Engineering Technology and Sciences, 2025, 15(01), 1636-1647. Article DOI: https://doi.org/10.30574/wjaets.2025.15.1.0369.