• DocumentCode
    1263539
  • Title

    Approximate Inference in State-Space Models With Heavy-Tailed Noise

  • Author

    Agamennoni, Gabriel ; Nieto, Juan I. ; Nebot, Eduardo M.

  • Author_Institution
    Australian Centre for Field Robot., Univ. of Sydney, Sydney, NSW, Australia
  • Volume
    60
  • Issue
    10
  • fYear
    2012
  • Firstpage
    5024
  • Lastpage
    5037
  • Abstract
    State-space models have been successfully applied across a wide range of problems ranging from system control to target tracking and autonomous navigation. Their ubiquity stems from their modeling flexibility, as well as the development of a battery of powerful algorithms for estimating the state variables. For multivariate models, the Gaussian noise assumption is predominant due its convenient computational properties. In some cases, anyhow, this assumption breaks down and no longer holds. We propose a novel approach to extending the applicability of this class of models to a wider range of noise distributions without losing the computational advantages of the associated algorithms. The estimation methods we develop parallel the Kalman filter and thus are readily implemented and inherit the same order of complexity. We derive all of the equations and algorithms from first principles. In order to validate the performance of our approach, we present specific instances of non-Gaussian state-space models and test their performance on experiments with synthetic and real data.
  • Keywords
    Gaussian noise; Kalman filters; approximation theory; target tracking; Gaussian noise; Kalman filter; approximate inference; autonomous navigation; computational properties; first principles; heavy-tailed noise; multivariate models; noise distributions; state variable estimation; state-space models; target tracking; ubiquity stems; Approximation methods; Estimation; Kalman filters; Noise; Robustness; Signal processing algorithms; State-space methods; Bayesian outlier detection; heavy-tailed noise; inverse Wishart distribution; robust Kalman filter; robust estimation; state-space models; student\´s $t$ distribution; sub-exponential noise;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2012.2208106
  • Filename
    6266757