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Comparison of interactive multiple model particle filter and interactive multiple model unscented particle filter for tracking multiple manoeuvring targets in sensors array

机译:交互式多模型粒子滤波器和交互式多模型Unscented粒子滤波器的比较跟踪传感器阵列的多机动目标

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Tracking multiple targets in cluttered environment has been acknowledged as a challenging task involving handling of measurement track-to-track uncertainty association in conjunction with nonlinearity and imprecision pervading the target dynamic models. In this paper an approach based on the use of an interacting multiple model particle filter (IMMPF) has been put forward, where the particle filter (PF) allows the system to handle non-linearity of the target cinematic models while the interacting multiple model (IMM) deals with the model switch when a target changes its manoeuvre. On the other hand, Cheap Joint Probabilistic Data Association (CJPDA) was used to tackle the data association problem. Two fusion architectures using the federated and the centralized form of Kalman filter were investigated. Performances and feasibility of the proposal are demonstrated through a set of Monte Carlo simulations involving three crossing targets. Also, a comparison analysis with an alternative approach using the IMM filter in conjunction with the Unscented Particle Filter (IMMUPF) is carried out. The results demonstrate the feasibility of the proposal and satisfactory tracking of the targets.
机译:在杂乱的环境中跟踪多个目标已经被确认为涉及与非线性和不精确性弥漫目标动态模型一起处理量测轨到轨的不确定性协会的一项艰巨的任务。在本文中基于使用的交互多模型微粒过滤器(IMMPF)的方法已被提出,其中,所述微粒过滤器(PF)允许系统的目标的电影模式的手柄非线性而交互多模型( IMM)与模型开关涉及当目标改变其机动。在另一方面,廉价联合概率数据协会(CJPDA)用于解决数据关联问题。使用联邦和卡尔曼滤波的形式集中两层化融合的体系结构进行了研究。该提案的性能和可行性都通过一组涉及三个交叉目标Monte Carlo模拟的证实。此外,与使用过滤器IMM与UPF滤波(IMMUPF)结合的另一种方法的比较分析中进行。结果表明各项指标的建议,并满意的跟踪的可行性。

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