The Labeled Square Root Cubature Information GM-PHD Approach for Multi Extended Targets Tracking

  • Zhe Liu*
  • , Siyu Zhang
  • , Zhiliang Yang
  • , Xiqiang Qu
  • , Jianping An
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

For modern radars with high resolutions, an extended target may generate more than one observations. The conventional point target-based tracking method can hardly be applied in such scenarios. Recently, the ET-GM-PHD approach has been presented for tracking these extended targets. The performance of such an approach has been influenced by the following disadvantages. First, it has been formulated under the linear Gaussian assumptions. When targets move with nonlinear models, the tracking performance may be rapidly decreased. Second, it neglects the time associations of the estimated states at different time steps, which makes it very challenging to manage targets for the radar systems. In this paper, we present a labeled ET-GM-PHD approach based on the square root cubature information filter (SRCIF) to solve such problems. To be more specific, we, first, utilize the SCRIF for predicting and updating the GM components of the ET-GM-PHD approach. For decreasing the computational cost, a candidate observation extracting method has been put forward in the GM component updating step. Thus, the ET-GM-PHD approach can be adopted to track extended targets with nonlinear motions. Second, a label-based trajectory constructing method has been proposed. By assigning the GM components with different labels before the GM component predicting step, we can obtain the estimated states with different labels. On this basis, the associations between the estimated states and trajectories can be modeled based on these labels. Thus, we can obtain the states and trajectories of multi extended targets simultaneously. The simulation results prove the effectiveness of our approach.

Original languageEnglish
Article number367
JournalSensors
Volume26
Issue number2
DOIs
Publication statusPublished - Jan 2026
Externally publishedYes

Keywords

  • ET-GM-PHD
  • Gaussian mixture
  • labeled GM components
  • square root cubature information filter
  • trajectory constructing

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