期刊文献+

一种基于随机集的目标跟踪算法研究

A target tracking algorithm based on random sets
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摘要 针对多传感器多目标跟踪问题,提出了基于随机有限集的概率假设密度(PHD)滤波算法。该算法通过选取与各传感器相关的重要性密度函数,层层更新各传感器的采样粒子,达到多传感器多目标有序PHD跟踪。给出了应用该算法的具体步骤,通过仿真实例证明该算法的有效性。 In order to solve multi-sensor multi-target tracking problem,a probability hypothesis density(PHD) filter algorithm based on random finite sets is proposed.The algorithm chooses the importance density function with regard to every sensor,layer-by-layer updates sample particle of every sensor,finally realizes the multi-sensor multi-target sequential PHD tracking.The approach of using this algorithm is introduced.Simulation examples show the validity and rationality of this algorithm.
出处 《航天电子对抗》 2010年第2期56-58,共3页 Aerospace Electronic Warfare
基金 国家自然科学基金项目(60601016)
关键词 信息融合 多目标跟踪 概率假设密度 随机集 有限集统计 information fusion multi-target tracking PHD random sets finite sets statistics
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参考文献6

  • 1熊伟,何友,张晶炜.多传感器顺序粒子滤波算法[J].电子学报,2005,33(6):1116-1119. 被引量:11
  • 2Mahler R."Statistics 101" for multisensor multitarget data fusion[J].IEEE A&E Systems Magazine (S1051-8215),2004,19(1):53-64.
  • 3Mahler R.Multitarget bayes filtering via first-order multitarget moments[J].IEEE Trans.on Aerospace and Electronic Systems(S0098-3063),2003,39(2):1152-1178.
  • 4Vo BN,Singh S,Doucet A.Sequential Monte Carlo methods for multi-target filtering with random finite sets[J].IEEE Trans.on Aerospace and Electronic Systems (S1053-587X),2005,30(5):1224-1245.
  • 5Zajic T,Mahler,R.A particle-systems implementation of the PHD multitarget tracking filter[J].In I.Kadar (Ed.),Signal Processing,Sensor Fusion,and Target Recognition Ⅻ,SPIE Proceedings (S0003-6935),2003,50 (4):291 -299.
  • 6Herman SM.A particle filtering approach to joint passive radar tracking and target classification[D].Illinois:University of Illinois,2002.

二级参考文献14

  • 1熊伟 ,张晶炜 ,何友 .修正的概率数据互联算法[J].海军航空工程学院学报,2004,19(3):309-311. 被引量:11
  • 2Gordon N J, Salmond. Novel approach to nonlinear/non-gaussian baysian state estimation [J]. IEE-Proceedings, 1993,140(2):107-113.
  • 3M Sanjeev Anllampalam, Simon Maskell, Neil Gordon. A tutorial on particle filters for online nonlinear/non-gaussian bayesial tracking[J].IEEE Trans on Signal Processing,2002,50(2):174-188.
  • 4A Farina, B Ristic. Tracking a ballistic target: Comparison of several nonlinear filters[J]. IEEE Trans on AES, 2002,38(3):854-867.
  • 5Shawn Michael Herman. A Particle Filtering Approach to Joint Passive Radar Tracking and Target Classification [D]. Illinois: University of Illinois, 2002.
  • 6Bar-shalom Y, Fortmann T E. Tracking and Data Association [M]. New York: Academic Press, 1988.
  • 7Arthur G O, Mutambara. Decentralized Estimation and Control for Multisensor Systems [M]. New York: C RC Press, 1999.
  • 8周宏仁 敬忠良 王培得.机动日标跟踪[M].北京:国防工业出版社,1991..
  • 9Simon J Julier, Jeffrey K Uhlmann. A new extension of the kalman filter to nonlinear systems[J].SPIE,3068,1997: 182-193.
  • 10Simon J Julier, Jeffrey K Uhlmann. A new method for the nonlinear transformation of means and covariances in filters and estimators[J].IEEE Trans on AC,2000,45(3):477-482.

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