关于使用可变速率粒子滤波器的跟踪应用

W. Ng, Jack Li, S. K. Pang, S. Godsill
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摘要

本文提出了一种基于可变速率粒子滤波器的多机动目标在线跟踪算法。与传统的粒子滤波不同,vrpf与内在动力学模型相结合,即使只采用单一的动力学模型,也能使我们跟踪物体的操纵行为。在此基础上,建立了马尔可夫随机场运动模型,用于模拟目标间的相互作用。在本文中,我们提出将数据依赖的重要性采样方法与框架相结合,以产生更具代表性的状态粒子。泊松观测模型还用于模拟目标和杂波测量,避免了与传统跟踪方法相关的数据关联困难。最后,计算机仿真验证了该方法在高杂波密度和低探测概率的敌对环境下跟踪多个高机动目标的潜力。
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On Tracking Applications using Variable Rate Particle Filters
In this paper we propose an online tracking algorithm for multiple manoeuvring targets using variable rate particle filters (VRPFs). Unlike conventional particle filters, VRPFs combined with an intrinsic dynamical model enables us to track the manoeuvring behaviour of an object even though only a single dynamical model is employed. Furthermore a Markov Random Field motion model is included for modelling target interactions. In this paper we propose to integrate a data-dependent importance sampling method with the framework to generate more representative state particles. A Poisson observation model is also used to model both targets and clutter measurements, avoiding the data association difficulties associated with traditional tracking approaches. Finally computer simulations demonstrate the potential of the proposed method for tracking multiple highly manoeuvrable targets in a hostile environment with high clutter density and low detection probability.
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