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Novel Multiple-Model Probability Hypothesis Density Filter for Multiple Maneuvering Targets Tracking

机译:多种机动目标跟踪的新型多模型概率假设密度滤波器

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In this paper, we present a novel multiple-model probability hypothesis density (MMPHD) filter for multiple maneuvering targets tracking. In the proposed MMPHD filter, the multiple models are composed of two models, namely a constant velocity (CV) model and a "current" statistical (CS) model, and the PHD is approximated by a set of weighted random samples propagated over time using sequential Monte Carlo (SMC) methods. This resulting filter requires no knowledge of models and model transition probabilities for different maneuvering motions. Simulation results demonstrate that compared with the standard MMPHD filter, the proposed filter shows similar tracking performances but has faster processing rate.
机译:在本文中,我们提出了一种用于多种机动目标跟踪的新型多模型概率假设密度(MMPHD)滤波器。在所提出的MMPHD滤波器中,多个模型由两个模型组成,即恒定速度(CV)模型和“当前”统计(CS)模型,并且PHD近似通过随时间传播的一组加权随机样本近似序贯蒙特卡罗(SMC)方法。该结果过滤器不需要了解不同的机动运动的模型和模型过渡概率。仿真结果表明,与标准MMPHD滤波器相比,所提出的滤波器显示出类似的跟踪性能,但加工速率更快。

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