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Tracking targets with multiple measurements per scan

机译:追踪每次扫描多次测量的目标

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The task of tracking targets, that generate more than one measurement per scan appears in several applications such as extended object and group tracking. There, the target (or group) extend implies that muliple measurements, drawn according to a spatial probability distribution, are measured per sensor-scan. However, applications exist where targets generate several measurements per sensor-scan, which are not geometrically correlated according to a distribution in the measurement space. An example for such an application is Blind Mobile Localization, which is the passive non-cooperative localization and tracking of mobile terminals in urban scenarios. In this paper a Probability Hypothesis Density filter for general models of target-generated measurements is applied to track targets with multiple measurements per scan, where the measurements do not necessarily have to be spatially related in the measurement space. Furthermore, the problem of numerical feasibility is identified and two ways of approximating the update equation of the generalized Probability Hypothesis Density filter are proposed. Finally, a sequential Monte Carlo-implementation of the generalized Probability Hypothesis Density filter with a Poisson clutter model is used for a numerical evaluation.
机译:跟踪目标的任务,每次扫描生成多个测量的若干应用程序,例如扩展对象和组跟踪。在那里,目标(或组)延伸意味着根据空间概率分布绘制的Muliple测量,每个传感器扫描测量。然而,目标存在的应用程序在每个传感器扫描生成几次测量的情况下,这在没有根据测量空间的分布而不是几何相关的。这种应用的示例是盲目移动定位,这是城市情景中的移动终端的被动非协作定位和跟踪。在本文中,针对目标生成测量的一般模型的概率假设密度滤波器被施加到每次扫描的多次测量的轨道轨迹,其中测量不一定在测量空间中不一定地相关。此外,提出了识别数值可行性的问题,提出了两种近似广义概率假设密度滤波器的更新方程的方法。最后,使用具有泊松杂波模型的广义概率假设密度滤波器的顺序蒙特卡罗实现用于数值评估。

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