Divers Tracking with Improved Gaussian Mixture Probability Hypothesis Density filter

Ben Liu, R. Tharmarasa, Simon Hallé, Rahim Jassemi, M. Florea, T. Kirubarajan
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引用次数: 1

Abstract

The group divers tracking problem with a 2D high-resolution active sonar is studied in this paper. Probability Hypothesis Density (PHD) filter is famous for its good ability in multiple targets tracking. Instead of travelling in a constant velocity motion model, the activity of divers may be, however, affected by the factors such as the destination, activities of surrounded divers and the potential intention of themselves. That is, not only are the motion states of divers correlated with each other but also dependent on the external environment. A solution is proposed to deal with the challenges of a time-varying number of targets, potential interactions by taking advantage of the PHD filter and social forced model (SFM). The diver dynamic model (DDM) is created based on the social force concept. By including the DDM model into the framework of PHD filter, the dependencies from closed group targets and external environments are considered in the recursive Bayesian framework and a different likelihood in prediction stage of a filter can also be obtained. Numerical simulation results show that the proposed method here is able to improve the performance of the PHD filter in the presence of interactions.
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基于改进高斯混合概率假设密度滤波的潜水员跟踪
研究了二维高分辨率主动声呐的群潜跟踪问题。概率假设密度滤波器以其良好的多目标跟踪能力而闻名。然而,潜水员的活动可能会受到目的地、周围潜水员的活动以及自身潜在意图等因素的影响,而不是以匀速运动模式行进。也就是说,潜水员的运动状态不仅相互关联,而且依赖于外部环境。提出了一种利用PHD滤波器和社会强制模型(SFM)来解决时变目标数量、潜在交互的挑战。基于社会力的概念,建立了潜水员动态模型。通过将DDM模型纳入到PHD滤波器的框架中,在递归贝叶斯框架中考虑了封闭群目标和外部环境的依赖关系,从而获得了一个滤波器在预测阶段的不同似然。数值仿真结果表明,本文提出的方法能够改善存在相互作用的PHD滤波器的性能。
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