Topçu, O.Orguner, U.Alatan, A. A.Ercan, Ali Özer2016-02-162016-02-162014978-1-4799-4874-12165-0608http://hdl.handle.net/10679/2551https://doi.org/10.1109/SIU.2014.6830318Due to copyright restrictions, the access to the full text of this article is only available via subscription.Visual tracking has an important place among computer vision applications. Visual tracking with particle filters is a well-known methodology. The performance of particle filters is dependent on efficient sampling of the state space, which in turn, is dependent on number of particles. In this paper, Rao-Blackwell technique is applied to particle filters to improve sampling efficiency. Both algorithms are applied to people tracking problem. Under the same circumstances, the resulting algorithm is demonstrated to perform better than the original algorithm via experiments on the PETS2009 benchmark dataset.turrestrictedAccessRao-Blackwell parçacık süzgeci ile 3 boyutlu insan takibi3D tracking of people with rao-blackwellized particle filtersconferenceObject67067300035635140014710.1109/SIU.2014.6830318Visual trackingRao-BlackwellizationMarginalizationOcclusionParticle filterMulti-camera2-s2.0-84903762691