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Maneuvering Target Tracking in Dense Clutter Based on Particle Filtering 被引量:8

Maneuvering Target Tracking in Dense Clutter Based on Particle Filtering
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摘要 An improved particle filtering(IPF) is presented to perform maneuvering target tracking in dense clutter.The proposed filter uses several efficient variance reduction methods to combat particle degeneracy,low mode prior probabilities and measure-ment-origin uncertainty.Within the framework of a hybrid state estimation,each particle samples a discrete mode from its poste-rior distribution and the continuous state variables are approximated by a multivariate Gaussian mixture that is updated by an unscented Kalman filtering(UKF).The uncertainty of measurement origin is solved by Monte Carlo probabilistic data associa-tion method where the distribution of interest is approximated by particle filtering and UKF.Correct data association and precise behavior mode detection are successfully achieved by the proposed method in the environment with heavy clutter and very low mode prior probability.The performance of the proposed filter is examined and compared by Monte Carlo simulation over typical target scenario for various clutter densities.The simulation results show the effectiveness of the proposed filter. An improved particle filtering(IPF) is presented to perform maneuvering target tracking in dense clutter.The proposed filter uses several efficient variance reduction methods to combat particle degeneracy,low mode prior probabilities and measure-ment-origin uncertainty.Within the framework of a hybrid state estimation,each particle samples a discrete mode from its poste-rior distribution and the continuous state variables are approximated by a multivariate Gaussian mixture that is updated by an unscented Kalman filtering(UKF).The uncertainty of measurement origin is solved by Monte Carlo probabilistic data associa-tion method where the distribution of interest is approximated by particle filtering and UKF.Correct data association and precise behavior mode detection are successfully achieved by the proposed method in the environment with heavy clutter and very low mode prior probability.The performance of the proposed filter is examined and compared by Monte Carlo simulation over typical target scenario for various clutter densities.The simulation results show the effectiveness of the proposed filter.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2011年第2期171-180,共10页 中国航空学报(英文版)
基金 National Natural Science Foundation of China (60975028) National High-tech Research and Development Program (2009AA112203) Fundamental Research Funds for the Central Universities (CHD2009JC037) Natural Science Basic Research Plan in Shaanxi Province (2006F12)
关键词 particle filtering Monte Carlo methods Kalman filter probability data association target tracking nonlinear filtering particle filtering Monte Carlo methods Kalman filter probability data association target tracking nonlinear filtering
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