OSPA(2): Using the OSPA metric to evaluate multi-target tracking performance

Michael Beard, B. Vo, B. Vo
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引用次数: 42

Abstract

The optimal sub-pattern assignment (OSPA) metric is a distance between two sets of points that jointly accounts for the dissimilarity in the number of points and the values of the points in the respective sets. The OSPA metric is often used for measuring the distance between two sets of points in Euclidean space. A common example is in multi-target filtering, where the aim is to estimate the set of current target states, all of which have the same dimension. In multi-target tracking (MTT), the aim is to estimate the set of target tracks over a period of time, rather than the set of target states at each time step. In this case, it is not sufficient to analyse the multi-target filtering error at each time step in isolation. It is important that a metric for evaluating MTT performance accounts for the dissimilarity between the overall target tracks, which are generally of different dimensions. In this paper, we demonstrate that MTT error can be captured using the OSPA metric to define a distance between two sets of tracks.
OSPA(2):使用OSPA度量来评价多目标跟踪性能
最优子模式分配(OSPA)度量是两组点之间的距离,这两组点共同说明了各自集中点的数量和值的不相似性。OSPA度规常用于测量欧几里得空间中两组点之间的距离。一个常见的例子是在多目标滤波中,其目的是估计当前目标状态的集合,所有这些状态都具有相同的维数。在多目标跟踪(MTT)中,目标是估计一段时间内的目标轨迹集,而不是每个时间步长的目标状态集。在这种情况下,孤立地分析每个时间步的多目标滤波误差是不够的。重要的是,评估MTT性能的度量要考虑到总体目标轨迹之间的差异,这些轨迹通常具有不同的维度。在本文中,我们证明了MTT误差可以使用OSPA度量来定义两组航迹之间的距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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