基于无气味概率假设密度滤波的多目标跟踪与分类

M. Melzi, A. Ouldali, Z. Messaoudi
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引用次数: 1

摘要

跟踪数量未知且随时间变化的目标是一个难题。Unscented概率假设密度滤波器(UKPHD)解决了这个问题,此外,它允许在没有任何数据关联步骤的情况下,通过将目标状态视为单个全局目标状态来估计目标数量及其状态,它是处理非线性系统的概率假设密度(PHD)滤波器的封闭形式解决方案。它传播多目标后验的一阶矩,而不是后验分布本身,因为目前在多目标跟踪问题的实时应用中,评估多目标后验分布在计算上很困难。然而,单一的动态模型很难描述目标,而且目标的运动模型可能随时发生变化,这使得跟踪算法无法有效地估计目标的真实轨迹。交互多模型(IMM)算法用于解决这个问题。IMM使用多个模型来描述目标行为,并自适应地确定在每个时间步中哪个模型是最合适的。针对时变机动目标的跟踪问题,提出了一种新的互作用多模型无气味概率假设密度滤波器(IMM-UKPHD)。在我们的方法中,在交互多模型(IMM)框架中使用一组Unscented概率假设密度滤波器来更新运动目标的状态。仿真结果表明了该算法的有效性。
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Multiple target tracking and classification using the unscented probability hypothesis density filter
Tracking an unknown and time varying number of targets is a difficult issue. The Unscented Probability Hypothesis Density Filter (UKPHD) tackles this problem, moreover, it allows the estimation of both the number of targets and their states without any data association steps by considering the target states as a single global target state, its a closed-form solution for the probability hypothesis density (PHD) filter that deals with non linear systems, it propagates the first-order moment of the multitarget posterior instead of the posterior distribution itself because evaluating the multiple-target posterior distribution is currently computationally intractable for real-time applications in multiple Target tracking problems. However, targets are poorly described by a single dynamic model, in fact, they may change their kinematic model at any time which makes the tracking algorithm incapable of estimating efficiently the true trajectories. The Interacting Multiple Model (IMM) algorithm is used to address this. The IMM uses multiple models to describe targets behavior and adaptively determines which model(s) are the most appropriate at each time step. In this paper, we present a new interacting multiple model Unscented probability hypothesis density filter (IMM-UKPHD) to deal with the problem of tracking a time varying number of maneuvering targets. In our approach, a bank of Unscented probability hypothesis density filters is used in the interacting multiple model (IMM) framework for updating the state of moving targets. Simulation results show the efficiency of the proposed algorithm.
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