引用本文:杨小军,潘泉,王睿,张洪才 .粒子滤波进展与展望[J].控制理论与应用,2006,23(2):261~267.[点击复制]
YANG Xiao-jun,PAN Quan,WANG Rui,ZHANG Hong-cai.Development and prospect of particle filtering[J].Control Theory and Technology,2006,23(2):261~267.[点击复制]
粒子滤波进展与展望
Development and prospect of particle filtering
摘要点击 2605  全文点击 3467  投稿时间:2004-08-04  修订日期:2005-06-17
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DOI编号  10.7641/j.issn.1000-8152.2006.2.019
  2006,23(2):261-267
中文关键词  Bayes估计  粒子滤波器  最优滤波  序贯Monte Carlo方法
英文关键词  Bayesian estimation  particle filtering  optimal filtering  sequential Monte Carlo methods
基金项目  国家自然科学基金资助项目(60404011,60372085)
作者单位
杨小军,潘泉,王睿,张洪才 西北工业大学自动化学院,陕西西安710072
西安电子科技大学电子工程学院,陕西西安710071 
中文摘要
      粒子滤波器是基于序贯Monte Carlo仿真方法的非线性滤波算法,本文对粒子滤波器的研究现状和研究进展做了综述,详细论述了粒子滤波原理、收敛性、应用及进展.首先在Bayes框架内分析了序贯重要性采样原理,重要性分布函数的选择,以及重采样方法,总结了粒子滤波器发展过程中的各种改进策略和新变种,讨论了粒子滤波器在各个领域的应用及进展,最后介绍了粒子方法的新发展,新动态,并对未来发展方向做了进一步的展望.
英文摘要
      Particle filtering is a sequential Monte Carlo simulation based on nonlinear filtering algorithm.An overview of the status and development of research on particle filtering is presented.The principle,convergence,application and evolution of particle filtering are described in detail.First,the principle of sequential importance-sampling,the choice of importance distribution function,and the method of re-sampling are analyzed within Bayesian framework.Secondly,the improvement methods and novel variations of particle filtering are then summarized.Thirdly,the application and development in various areas are reviewed.Fourthly,the novel extension and trends of particle filtering are illustrated.Finally,further research prospects are introduced.