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Passive Target Tracking Based on Current Statistical Model
作者姓名:邓小龙  谢剑英  杨煜普
作者单位:Department of Automation, Shanghai Jiaotong University, Shanghai 200030
基金项目:高比容电子铝箔的研究开发与应用项目
摘    要:Bearing-only passive tracking is regarded as a nonlinear hard tracking problem. There are still no completely good solutions to this problem until now. Based on current statistical model, the novel solution to this problem utilizing particle filter (PF) and the unscented Kalman filter (UKF) is proposed. The new solution adopts data fusion from two observers to increase the observability of passive tracking. It applies the residual resampling step to reduce the degeneracy of PF and it introduces the Markov Chain Monte Carlo methods (MCMC) to reduce the effect of the “sample impoverish”. Based on current statistical model, the EKF, the UKF and particle filter with various proposal distributions are compared in the passive tracking experiments with two observers. The simulation results demonstrate the good performance of the proposed new filtering methods with the novel techniques.

关 键 词:被动目标跟踪  统计模型  卡尔曼滤波  数据融合
收稿时间:2005-07-02

Passive Target Tracking Based on Current Statistical Model
DENG Xiao-long,XIE Jian-ying,YANG Yu-pu.Passive Target Tracking Based on Current Statistical Model[J].Journal of Donghua University,2005,22(3):120-125.
Authors:DENG Xiao-long  XIE Jian-ying  YANG Yu-pu
Abstract:Bearing-only passive tracking is regarded as a nonlinear hard tracking problem. There are still no completely good solutions to this problem until now. Based on current statistical model, the novel solution to this problem utilizing particle filter (PF) and the unscented Kalman filter (UKF) is proposed. The new solution adopts data fusion from two observers to increase the observability of passive tracking. It applies the residual resampling step to reduce the degeneracy of PF and it introduces the Markov Chain Monte Carlo methods (MCMC) to reduce the effect of the "sample impoverish". Based on current statistical model, the EKF, the UKF and particle filter with various proposal distributions are compared in the passive tracking experiments with two observers. The simulation results demonstrate the good performance of the proposed new filtering methods with the novel techniques.
Keywords:current statistical model  particle filter  the unscented Kalman filter  passive tracking  data fusion
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