Trajectory PHD and CPHD Filters with Unknown Detection Profile
Shaoxiu Wei, Boxiang Zhang, Wei Yi

TL;DR
This paper introduces adaptive trajectory filters that learn unknown detection probabilities, improving robustness and efficiency in tracking scenarios with time-varying detection profiles.
Contribution
The paper develops U-TPHD and U-TCPHD filters that adaptively estimate unknown detection probabilities, with efficient implementations using Beta-Gaussian mixtures and L-scan approximations.
Findings
Filters achieve robust tracking with unknown detection profiles.
L-scan approximation reduces computational cost significantly.
Simulation results confirm improved performance and efficiency.
Abstract
Compared to the probability hypothesis density (PHD) and cardinalized PHD (CPHD) filters, the trajectory PHD (TPHD) and trajectory CPHD (TCPHD) filters are for sets of trajectories, and thus are able to produce trajectory estimates with better estimation performance. In this paper, we develop the TPHD and TCPHD filters which can adaptively learn the history of the unknown target detection probability, and therefore they can perform more robustly in scenarios where targets are with unknown and time-varying detection probabilities. These filters are referred to as the unknown TPHD (U-TPHD) and unknown TCPHD (U-TCPHD) filters.By minimizing the Kullback-Leibler divergence (KLD), the U-TPHD and U-TCPHD filters can obtain, respectively, the best Poisson and independent identically distributed (IID) density approximations over the augmented sets of trajectories. For computational efficiency,…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Anomaly Detection Techniques and Applications · Gaussian Processes and Bayesian Inference
