一种基于区域增长的扩展目标跟踪聚类方法

V. Leonhardt, G. Wanielik, Stephan Kälberer
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引用次数: 4

摘要

在由多个运动物体组成的景物需要使用雷达进行观察和分析的情况下,可能会出现扩展物体引起多次观察的情况。因此,传统的基于点目标假设的跟踪算法需要处理大量的观测数据,每个目标产生多条轨迹,速度明显变慢。此外,有必要对音轨进行整理和合并,然后才能使用。为了避免这些问题,本文提出了一种基于雷达目标跟踪的聚类算法。该算法在将观测值传递给跟踪之前对其进行组合、分配和丢弃。这样,不仅利用了观测数据,而且利用了现有的轨道。最后,以某汽车目标跟踪系统为例,对所提出的方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A region-growing based clustering approach for extended object tracking
In the case a scenery consisting of multiple moving objects has to be observed and analyzed by using radar, it may occur that extended objects cause more than one observation. As a consequence, a conventional tracking algorithm, that bases on the assumption of point objects, has to process lots of observations, generates several tracks per object and thus is slowed down distinctly. Moreover, it is necessary to sort out and merge the tracks before they can be used. In order to avoid these problems, a clustering algorithm for radar-based object tracking is presented in this paper. The algorithm combines, assigns and discards observations before they are passed on to the tracking. Thereby not only the observations are utilized, but also the existing tracks. Furthermore, the method proposed and its benefits are tested in the example of an automotive object tracking system.
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