• DocumentCode
    20894
  • Title

    Asymptotic Efficiency of the PHD in Multitarget/Multisensor Estimation

  • Author

    Braca, Paolo ; Marano, Stefano ; Matta, Vincenzo ; Willett, P.

  • Author_Institution
    NATO STO Centre for Maritime Res. & Experimentation, La Spezia, Italy
  • Volume
    7
  • Issue
    3
  • fYear
    2013
  • fDate
    Jun-13
  • Firstpage
    553
  • Lastpage
    564
  • Abstract
    Tracking an unknown number of objects is challenging, and often requires looking beyond classical statistical tools. When many sensors are available the estimation accuracy can reasonably be expected to improve, but there is a concomitant rise in the complexity of the inference task. Nowadays, several practical algorithms are available for multitarget/multisensor estimation and tracking. In terms of current research activity one of the most popular is the probability hypothesis density, commonly referred to as the PHD, in which the goal is estimation of object locations (unlabeled estimation) without concern for object identity (which is which). While it is relatively well understood in terms of its implementation, little is known about its performance and ultimate limits. This paper is focused on the characterization of PHD estimation performance for the static multitarget case, in the limiting regime where the number of sensors goes to infinity. It is found that the PHD asymptotically behaves as a mixture of Gaussian components, whose number is the true number of targets, and whose peaks collapse in the neighborhood of the classical maximum likelihood estimates, with a spread ruled by the Fisher information. Similar findings are obtained with reference to a naïve, two-step algorithm which first detects the number of targets, and then estimates their positions.
  • Keywords
    Gaussian processes; maximum likelihood estimation; probability; target tracking; Fisher information; Gaussian components; PHD estimation performance; asymptotic efficiency; estimation accuracy; inference task; maximum likelihood estimation; multisensor estimation; multitarget estimation; object location estimation; probability hypothesis density; target tracking; Convergence; Covariance matrices; Maximum likelihood estimation; Measurement; Sensors; Vectors; PHD; RFS; Unlabeled multi-object estimation; multiple sensors; probability hypothesis density; random finite sets;
  • fLanguage
    English
  • Journal_Title
    Selected Topics in Signal Processing, IEEE Journal of
  • Publisher
    ieee
  • ISSN
    1932-4553
  • Type

    jour

  • DOI
    10.1109/JSTSP.2013.2257161
  • Filename
    6502188