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Adaptive multi-feature tracking in particle swarm optimization based particle filter framework 被引量:7

Adaptive multi-feature tracking in particle swarm optimization based particle filter framework
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摘要 This paper proposes a particle swarm optimization(PSO) based particle filter(PF) tracking framework,the embedded PSO makes particles move toward the high likelihood area to find the optimal position in the state transition stage,and simultaneously incorporates the newest observations into the proposal distribution in the update stage.In the proposed approach,likelihood measure functions involving multiple features are presented to enhance the performance of model fitting.Furthermore,the multi-feature weights are self-adaptively adjusted by a PSO algorithm throughout the tracking process.There are three main contributions.Firstly,the PSO algorithm is fused into the PF framework,which can efficiently alleviate the particles degeneracy phenomenon.Secondly,an effective convergence criterion for the PSO algorithm is explored,which can avoid particles getting stuck in local minima and maintain a greater particle diversity.Finally,a multi-feature weight self-adjusting strategy is proposed,which can significantly improve the tracking robustness and accuracy.Experiments performed on several challenging public video sequences demonstrate that the proposed tracking approach achieves a considerable performance. This paper proposes a particle swarm optimization(PSO) based particle filter(PF) tracking framework,the embedded PSO makes particles move toward the high likelihood area to find the optimal position in the state transition stage,and simultaneously incorporates the newest observations into the proposal distribution in the update stage.In the proposed approach,likelihood measure functions involving multiple features are presented to enhance the performance of model fitting.Furthermore,the multi-feature weights are self-adaptively adjusted by a PSO algorithm throughout the tracking process.There are three main contributions.Firstly,the PSO algorithm is fused into the PF framework,which can efficiently alleviate the particles degeneracy phenomenon.Secondly,an effective convergence criterion for the PSO algorithm is explored,which can avoid particles getting stuck in local minima and maintain a greater particle diversity.Finally,a multi-feature weight self-adjusting strategy is proposed,which can significantly improve the tracking robustness and accuracy.Experiments performed on several challenging public video sequences demonstrate that the proposed tracking approach achieves a considerable performance.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2012年第5期775-783,共9页 系统工程与电子技术(英文版)
基金 supported by the Chinese Ministry of Science and Intergovernmental Cooperation Project (2009DFA12870) the National Science Foundation of China (60974062,60972119)
关键词 particle filter particle swarm optimization adaptive weight adjustment visual tracking particle filter particle swarm optimization adaptive weight adjustment visual tracking
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参考文献24

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同被引文献44

  • 1夏克寒,许化龙,张朴睿.粒子滤波的关键技术及应用[J].电光与控制,2005,12(6):1-4. 被引量:34
  • 2方正,佟国峰,徐心和.粒子群优化粒子滤波方法[J].控制与决策,2007,22(3):273-277. 被引量:95
  • 3叶龙,王京玲,张勤.遗传重采样粒子滤波器[J].自动化学报,2007,33(8):885-887. 被引量:43
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