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Bayesian Positioning Using Gaussian Mixture Models with Time-varying Component Weights

    Research output: Chapter in Book/Report/Conference proceedingConference contributionScientific

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    Abstract

    Gaussian mixture models are often used in target tracking applications to take into account maneuvers in state dynamics or changing levels of observation noise. In this study it is assumed that the measurement or the state transition model can have two plausible candidates, as for example in positioning with line-of-sight or non-line-sight-signals. The plausibility described by the mixture component weight is modeled as a time-dependent random variable and is formulated as a Markov process with a heuristic model based on the Beta distribution. The proposed system can be used to approximate some well-known multiple model systems by tuning the parameter of the state transition distribution for the component weight. The posterior distribution of the state can be solved approximately using a Rao-Blackwellized particle filter. Simulations of GPS pedestrian tracking are used to test the proposed method. The results indicate that the new system is able to find the true models and its root mean square error-performance is comparable to filters that know the true models.
    Translated title of the contributionBayesian Positioning Using Gaussian Mixture Models with Time-varying Component Weights
    Original languageEnglish
    Title of host publicationJSM 2011 Joint Statistical Meetings 2011, Miami Beach, Florida, USA, July 30-August 4, 2011
    Place of PublicationMiami Beach, FL
    PublisherAmerican Statistical Association
    Pages4516-4524
    Publication statusPublished - 2011
    Publication typeB3 Article in conference proceedings

    Publication series

    NameJoint Statistical Meetings JSM
    PublisherAmerican Statistical Association

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