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Urban terrain multiple target tracking using probability hypothesis density particle filtering

机译:基于概率假设密度粒子滤波的城市地形多目标跟踪

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摘要

A multi-model particle probability hypothesis density filer (PPHDF) algorithm for multiple target tracking in urban terrain is investigated in this paper. The multi-model PPHDF is based on target state-space modeling of urban scenarios, random finite set theory, multiple model estimation theory, and sequential Monte Carlo implementations. Our proposed algorithm can instantaneously and efficiently estimate both the number of targets and their corresponding states without conventional measurement-to-track associations. Numerical simulation results demonstrate that the multi-model PPHDF can achieve good tracking performance with tractable computational complexity in the test bench urban tracking scenario with complex multipath radar return patterns.
机译:研究了一种用于城市地形多目标跟踪的多模型粒子概率假设密度滤波算法(PPHDF)。多模型PPHDF基于城市情景的目标状态空间建模,随机有限集理论,多模型估计理论和顺序蒙特卡洛实现。我们提出的算法可以立即有效地估计目标的数量及其对应的状态,而无需常规的测量与跟踪关联。数值仿真结果表明,在具有复杂多径雷达回波模式的试验台城市跟踪场景中,多模型PPHDF能够以良好的计算复杂度实现良好的跟踪性能。

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