Sets of moving entities can form groups which travel together for significant amounts of time. Tracking such groups is an important analysis task in a variety of areas, such as wildlife ecology, urban transport, or sports analysis. Correspondingly, recent years have seen a multitude of algorithms to identify and track meaningful groups in sets of moving entities. However, not only the mere existence of one or more groups is an important fact to discover; in many application areas the actual shape of the group carries meaning as well. In this paper we initiate the algorithmic study of the shape of a moving group. We use kernel density estimation to model the density within a group and show how to efficiently maintain an approximation of this density description over time. Furthermore, we track persistent maxima which give a meaningful first idea of the time-varying shape of the group. By combining several approximation techniques, we obtain a kinetic data structure that can approximately track persistent maxima efficiently.
翻译:移动实体集合可以形成一起旅行的群体。跟踪这样的群体是各种领域的重要分析任务,如野生动物生态学、城市交通或体育分析。相应地,近年来已经出现了大量算法,用于在移动实体集合中识别和跟踪有意义的群体。然而,不仅仅是发现一个或多个群体的存在是一个重要的事实;在许多应用领域中,群体的实际形状也具有重要意义。在本文中,我们开展了移动群体形状的算法研究。我们使用核密度估计来建模群体内的密度,并展示如何有效地维护随时间变化的密度描述的近似值。此外,我们跟踪持久的最大值,这给出了群体时变形状的有意义的第一印象。通过结合几种逼近技术,我们获得了一种可以有效近似跟踪持久最大值的运动数据结构。