• DocumentCode
    2591839
  • Title

    A statistical framework for natural feature representation

  • Author

    Kumar, Suresh ; Ramos, Fabio ; Upcroft, Ben ; Durrant-Whyte, Hugh

  • Author_Institution
    ARC Centre of Excellence for Res. in Autonomous Syst. Australian Centre for Field Robotics, Sydney Univ., NSW, Australia
  • fYear
    2005
  • fDate
    2-6 Aug. 2005
  • Firstpage
    1582
  • Lastpage
    1587
  • Abstract
    This paper presents a robust stochastic framework for the incorporation of visual observations into conventional estimation, data fusion, navigation and control algorithms. The representation combines Isomap, a non-linear dimensionality reduction algorithm, with expectation maximization, a statistical learning scheme. The joint probability distribution of this representation is computed offline based on existing training data. The training phase of the algorithm results in a nonlinear and non-Gaussian likelihood model of natural features conditioned on the underlying visual states. This generative model can be used online to instantiate likelihoods corresponding to observed visual features in real-time. The instantiated likelihoods are expressed as a Gaussian mixture model and are conveniently integrated within existing non-linear filtering algorithms. Example applications based on real visual data from heterogenous, unstructured environments demonstrate the versatility of the generative models.
  • Keywords
    expectation-maximisation algorithm; feature extraction; probability; Gaussian mixture model; expectation maximization; feature extraction; natural feature representation; nonGaussian likelihood model; nonlinear dimensionality reduction; nonlinear filtering; nonlinear likelihood model; nonlinear manifolds; probability distribution; robust stochastic framework; statistical learning; Application software; Australia; Feature extraction; Filtering algorithms; Independent component analysis; Simultaneous localization and mapping; Sonar navigation; Statistical learning; Stochastic processes; Underwater vehicles; Feature extraction; Natural feature representation; Nonlinear manifolds; Statistical learning;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on
  • Print_ISBN
    0-7803-8912-3
  • Type

    conf

  • DOI
    10.1109/IROS.2005.1544950
  • Filename
    1544950