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划分交互式箱粒子概率假设密度滤波法
引用本文:王海,杨小军. 划分交互式箱粒子概率假设密度滤波法[J]. 计算机技术与发展, 2021, 0(4): 57-62
作者姓名:王海  杨小军
作者单位:长安大学信息工程学院
基金项目:国家自然科学基金(61473047)。
摘    要:针对现有的多机动目标追踪问题,将交互式多模型(interacting multiple model,IMM)思想与箱粒子概率假设密度滤波器(box probability hypothesis density filter,Box-PHD)相结合,并针对箱粒子在区间密集杂波等复杂环境下箱体偏大,所导致的箱粒子冗余和目标...

关 键 词:交互式多模  机动目标追踪  概率假设密度滤波  箱粒子滤波  箱粒子划分

Partitioned Interacting Multiple Model Box-PHD Filter
WANG Hai,YANG Xiao-jun. Partitioned Interacting Multiple Model Box-PHD Filter[J]. Computer Technology and Development, 2021, 0(4): 57-62
Authors:WANG Hai  YANG Xiao-jun
Affiliation:(School of Information Engineering,Chang’an University,Xi’an 710064,China)
Abstract:Aiming at the existing problem of multi-maneuvering target tracking,the idea of interacting multiple model(IMM)is combined with box probability hypothesis density filter(Box-PHD).And for the problems such as box particle redundancy and inaccurate target tracking position estimation caused by large cabinets in the complex environment with dense interval clutter,the box particle partitioning technology is introduced and a partitioned interactive probability assumption density filter(PIMM-Box-PHD)is proposed to deal with the tracking of elliptical multi-maneuvering targets.The algorithm first introduces IMM prediction for the multi-target maneuvering problem in the prediction phase,and uses the multi-model interaction method to solve the model mismatch problem when the target moves.Secondly,the box division technology is used to divide the predicted box particles into the same size and weight multiple sub-boxes to improve the accuracy of target position estimation.Finally,Box-PHD filtering is used to perform interval measurement and update on the divided small-box particle sets.The experiment shows that the PIMM-Box-PHD algorithm proposed is efficient in tracking multiple maneuvering targets and superior to the IMM-Box-PHD algorithm in target position estimation.
Keywords:interacting multiple model  maneuvering target tracking  probability hypothesis density filter  box particle filter  box particle partition
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