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Passive multi-object localization and tracking using bearing data

机译:使用方位数据进行被动多目标定位和跟踪

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This paper addresses the problem of localization and tracking multiple non-cooperative objects using only passive bearing sensor data. The challenges in this context lie in an unknown number of objects, false alarms and clutter measurements. To avoid the time consuming data association and data storage, an iterative approach, which only considers the sensor data from the actual timestep for an update of every object state, is preferable. Our approach to perform this is a Monte Carlo realization of a probability hypothesis density filter. In this context we use bearing data gained from an antenna or optical camera mounted on an airborne observer. Tests on simulated and real world scenarios show that our approach leads to a stable localization and tracking of multiple targets, even in the presence of clutter and misleading bearing measurements.
机译:本文仅使用被动方位传感器数据解决了定位和跟踪多个非合作对象的问题。在这种情况下,挑战在于未知数量的物体,错误警报和混乱的测量结果。为了避免耗时的数据关联和数据存储,最好使用一种迭代方法,该方法仅考虑实际时间步长中的传感器数据以更新每个对象状态。我们执行此操作的方法是概率假设密度滤波器的蒙特卡罗实现。在这种情况下,我们使用从安装在机载观测器上的天线或光学相机获取的方位数据。在模拟和现实情况下的测试表明,即使在存在混乱和误导性的轴承测量结果的情况下,我们的方法也可以实现对多个目标的稳定定位和跟踪。

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