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A novel variable-lag probability hypothesis density smoother for multi-target tracking

A novel variable-lag probability hypothesis density smoother for multi-target tracking
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摘要 It is understood that the forward-backward probability hypothesis density (PHD) smoothing algorithms proposed recently can significantly improve state estimation of targets. However, our analyses in this paper show that they cannot give a good cardinality (i.e., the number of targets) estimate. This is because backward smoothing ignores the effect of temporary track drop- ping caused by forward filtering and/or anomalous smoothing resulted from deaths of targets. To cope with such a problem, a novel PHD smoothing algorithm, called the variable-lag PHD smoother, in which a detection process used to identify whether the filtered cardinality varies within the smooth lag is added before backward smoothing, is developed here. The analytical results show that the proposed smoother can almost eliminate the influences of temporary track dropping and anomalous smoothing, while both the cardinality and the state estimations can significantly be improved. Simulation results on two multi-target tracking scenarios verify the effectiveness of the proposed smoother. It is understood that the forward-backward probability hypothesis density (PHD) smoothing algorithms proposed recently can significantly improve state estimation of targets. However, our analyses in this paper show that they cannot give a good cardinality (i.e., the number of targets) estimate. This is because backward smoothing ignores the effect of temporary track drop- ping caused by forward filtering and/or anomalous smoothing resulted from deaths of targets. To cope with such a problem, a novel PHD smoothing algorithm, called the variable-lag PHD smoother, in which a detection process used to identify whether the filtered cardinality varies within the smooth lag is added before backward smoothing, is developed here. The analytical results show that the proposed smoother can almost eliminate the influences of temporary track dropping and anomalous smoothing, while both the cardinality and the state estimations can significantly be improved. Simulation results on two multi-target tracking scenarios verify the effectiveness of the proposed smoother.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2013年第4期1029-1037,共9页 中国航空学报(英文版)
基金 co-supported by the National Natural Science Foundation of China(No.61171127) NSF of China(No.60972024) NSTMP of China(No.2011ZX03003-001-02 and No.2012ZX03001007-003)
关键词 平滑算法 多目标跟踪 滞后 密度 概率 目标状态估计 可变 PHD Dynamic models Probability hypothesis density (PHD) Random finite sets Smoother Target tracking
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参考文献21

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