A Labeled GM-PHD Filter for Explicitly Tracking Multiple Targets

Sensors (Basel). 2021 Jun 7;21(11):3932. doi: 10.3390/s21113932.

Abstract

In this study, an explicit track continuity algorithm is proposed for multitarget tracking (MTT) based on the Gaussian mixture (GM) implementation of the probability hypothesis density (PHD) filter. Trajectory maintenance and multitarget state extraction in the GM-PHD filter have not been effectively integrated to date. To address this problem, we propose an improved GM-PHD filter. In this approach, the Gaussian components are classified and labeled, and multitarget state extraction is converted into multiple single-state extractions. This provides the identity label of the individual target and can shield against the negative effects of clutter in the prior density region on the estimates, thus realizing the integration of trajectory maintenance with state extraction in the GM-PHD filter. As no additional associated procedures are required, the overall real-time performance of the proposed filter is similar to or slightly lower than that of the basic GM-PHD filter. The results of numerical experiments demonstrate that the proposed approach can achieve explicit track continuity.

Keywords: Gaussian mixture; multitarget tracking; probability hypothesis density filter; state extraction; track continuity.

MeSH terms

  • Algorithms*
  • Normal Distribution