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Pedestrian Tracking in Car Parks : An Adaptive Interacting Multiple Models Based Filtering Method

机译:停车场中的行人跟踪:一种基于自适应交互多模型的滤波方法

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To address perception problems we must be able to track dynamics targets of the environment. An important issue of tracking is filtering problem in which estimates of the target's state are computed while observations are progressively received. This paper presents an adaptive interacting multiple models (IMM) based filtering method. Interacting multiple models have been successfully applied to many applications as they allow, using several filters in parallel, to deal with the uncertainty on motion model, a critical component of filtering. Indeed targets can rapidly change their motion over a lapse of time. This is the case of pedestrians for which it is difficult to define a unique motion model which matches all their possible displacements. Nevertheless, the transition probability matrix (TPM) which models the interaction between different filters in an IMM is in currently defined a priori or needs an important amount of tuning to be used efficiently. In this paper, we put forward a method which automatically adapts online the TPM. The TPM adaptation using on-line data significantly improves the effectiveness of IMM filtering and so better target estimates are obtained. To validate our work we applied our method to pedestrian tracking in car parks on a real platform
机译:为了解决感知问题,我们必须能够跟踪环境的动态目标。跟踪的一个重要问题是过滤问题,即在逐步接收观测值的同时计算目标状态的估计值。本文提出了一种基于自适应交互多模型(IMM)的过滤方法。相互作用的多个模型已成功应用于许多应用,因为它们允许并行使用多个滤波器来处理运动模型中的不确定性,运动模型是滤波的关键组成部分。实际上,目标可以在一段时间内快速改变其运动。对于行人来说,很难定义一个与他们所有可能的位移相匹配的唯一运动模型。然而,目前在先验中定义了对IMM中不同滤波器之间的交互进行建模的过渡概率矩阵(TPM),或者需要进行大量调整才能有效使用。在本文中,我们提出了一种自动在线调整TPM的方法。使用在线数据进行的TPM调整显着提高了IMM过滤的效率,因此可以获得更好的目标估计。为了验证我们的工作,我们将我们的方法应用于真实平台上停车场的行人跟踪

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