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Marginal Association Probabilities for Multiple Extended Objects without Enumeration of Measurement Partitions

机译:不枚举测量分区的多个扩展对象的边际关联概率

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摘要

In the case of high-resolution or near field sensors, an object normally gives rise to multiple measurements per scan. One of the key tasks in tracking such objects is to differentiate the origins of the measurements. In this work, a new data association approach for extended object tracking, which is inspired by Joint Integrated Probabilistic Data Association (JIPDA), is proposed. The key idea is to calculate marginal association probabilities for individual measurements (instead of considering measurement partitions). Our problem formulation allows us to obtain the marginal association probabilities without collective exhaustion of association hypotheses and partitions. The proposed data association method is illustrated first using a simulation with Gaussian distributed measurements. Combined with an extended object measurement model, the data association quality is further assessed in a simulation and an experiment by tracking pedestrians using Lidar data from the KITTI dataset.
机译:在高分辨率或近场传感器的情况下,对象通常会在每次扫描中引起多次测量。跟踪此类对象的关键任务之一是区分测量的来源。在这项工作中,受联合集成概率数据协会(JIPDA)的启发,提出了一种用于扩展对象跟踪的新数据关联方法。关键思想是计算单个度量的边际关联概率(而不是考虑度量分区)。我们的问题公式使我们能够获得边际关联概率,而无需对关联假设和划分进行集体穷尽。首先使用具有高斯分布测量值的模拟对提出的数据关联方法进行说明。结合扩展的对象测量模型,可以通过使用KITTI数据集中的Lidar数据跟踪行人,在模拟和实验中进一步评估数据关联质量。

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