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The Social Force PHD Filter for Tracking Pedestrians

机译:追踪行人的社会力量PHD过滤器

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This paper addresses the problem of tracking multiple pedestrians whose motion is dependent on one another. The behavior of a pedestrian may be often affected by the motion of other pedestrians, obstacles in the surrounding, and his/her intended destination. Hence, a motion modeling technique, which integrates the various factors that affect the motion of pedestrians, is needed. In this paper, a social force based motion model integrated into the probability hypothesis density (PHD) framework is proposed. The social force concept has previously been used to model pedestrian motion when there are interactions among pedestrians. In this paper, the sequential Monte Carlo (SMC) technique and the Gaussian mixture (GM) technique are used to implement the proposed Social Force PHD (SF-PHD) filter and its multiple model variant in pedestrian tracking scenarios. A particle labeling approach is used in the SMC technique while a Gaussian component labeling approach is used in the GM technique for this purpose. Also, a modified performance measure independent of the proposed approaches but based on the posterior Cramer-Rao lower bound for targets whose motion is dependent on one another is derived. Simulation and real data-based results show that both the SMC implementation and the GM implementation of the proposed SF-PHD filter outperform existing filters that assume independent motion among ground targets.
机译:本文解决了跟踪多个行人相互依赖的行人的问题。行人的行为通常会受到其他行人的运动,周围的障碍物和他/她的预定目的地的影响。因此,需要一种运动建模技术,该技术集成了影响行人运动的各种因素。在本文中,提出了一种基于社会力量的运动模型,该模型集成到了概率假设密度(PHD)框架中。当行人之间存在交互时,社会力量概念曾被用来对行人运动进行建模。在本文中,顺序蒙特卡罗(SMC)技术和高斯混合(GM)技术用于在行人跟踪场景中实现拟议的社会力量PHD(SF-PHD)滤波器及其多模型变体。为此,在SMC技术中使用了粒子标记方法,而在GM技术中使用了高斯分量标记方法。而且,导出了一种改进的性能度量,该度量独立于所提出的方法,但基于后方Cramer-Rao下限,针对运动相互依赖的目标。仿真和基于实际数据的结果表明,所提出的SF-PHD滤波器的SMC实现和GM实现均优于假定地面目标之间独立运动的现有滤波器。

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