Tracking human motion using auxiliary particle filters and iterated likelihood weighting

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Bayesian particle filters have become popular for tracking human motion in cluttered scenes. The most commonly used filters suffer from two drawbacks. First, the prior used for the filtering step is often poor due to relatively large, poorly modelled inter-frame motion. Second, the use of the prior as an importance function results in inefficient sampling of the posterior. The use of the auxiliary particle filter (APF) and the novel iterated likelihood weighting filter (ILW) are proposed here in order to help address these problems. Experimental results comparing the filters’ accuracy and consistency are presented for a scenario in which a person is tracked in an overhead view using an ellipse model. A likelihood model based on combined region (colour) and boundary (gradient) cues is motivated and used. The ILW filter is shown to outperform both Condensation and the APF on typical sequences from this scenario.

论文关键词:Human tracking,Particle filters,Iterated likelihood weighting,Supportive environments,Head tracking

论文评审过程:Received 27 November 2002, Revised 12 January 2006, Accepted 13 June 2006, Available online 26 July 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2006.06.003