Real-time multiple people tracking using competitive condensation

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摘要

The CONDENSATION (Conditional Density Propagation) algorithm has a robust tracking performance and suitability for real-time implementation. However, the CONDENSATION tracker has some difficulties with real-time implementation for multiple people tracking since it requires very complicated shape modelling and a large number of samples for precise tracking performance. Further, it shows a poor tracking performance in the case of close or partially occluded people. To overcome these difficulties, we present three improvements: First, we construct effective templates of people's shapes using the SOM (Self-Organizing Map). Second, we take the discrete HMM (Hidden Markov Modelling) for an accurate dynamical model of the people's shape transition. Third, we use the competition rule to separate close or partially occluded people effectively. Simulation results shows that the proposed CONDENSATION algorithm can achieve robust and real-time tracking in the image sequences of a crowd of people.

论文关键词:Real-time multiple people tracking,Competitive CONDENSATION,HMM,SOM,People count,Video surveillance

论文评审过程:Received 29 December 2003, Revised 24 November 2004, Accepted 17 December 2004, Available online 10 March 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.12.008