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Discovery of Convoys in Trajectory Databases

机译:在航迹数据库中发现车队

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摘要

As mobile devices with positioning capabilities continue to proliferate, data management for so-called trajectory databases that capture the historical movements of populations of moving objects becomes important. This paper considers the querying of such databases for convoys, a convoy being a group of objects that have traveled together for some time.More specifically, this paper formalizes the concept of a convoy query using density-based notions, in order to capture groups of arbitrary extents and shapes. Convoy discovery is relevant for real-life applications in throughput planning of trucks and carpooling of vehicles. Although there has been extensive research on trajectories in the literature, none of this can be applied to retrieve correctly exact convoy result sets. Motivated by this, we develop three efficient algorithms for convoy discovery that adopt the well-known filter-refinement framework. In the filter step, we apply line-simplification techniques on the trajectories and establish distance bounds between the simplified trajectories. This permits efficient convoy discovery over the simplified trajectories without missing any actual convoys. In the refinement step, the candidate convoys are further processed to obtain the actual convoys. Our comprehensive empirical study offers insight into the properties of the paper's proposals and demonstrates that the proposals are effective and efficient on real-world trajectory data.
机译:随着具有定位功能的移动设备的不断普及,捕获移动物体种群的历史运动的所谓轨迹数据库的数据管理变得非常重要。本文考虑了此类数据库的车队查询,车队是一起旅行了一段时间的一组对象。 更具体地说,本文使用基于密度的概念对车队查询的概念进行形式化,以捕获任意范围和形状的组。车队发现与卡车吞吐量规划和车辆拼车中的实际应用有关。尽管在文献中对轨迹进行了广泛的研究,但是这些都不能被用来正确地检索正确的车队结果集。因此,我们开发了三种有效的车队发现算法,它们采用了众所周知的过滤器细化框架。在滤波步骤中,我们在轨迹上应用线简化技术,并建立简化轨迹之间的距离界限。这允许在简化的轨迹上进行有效的车队发现而不会丢失任何实际的车队。在改进步骤中,对候选车队进行进一步处理以获得实际车队。我们全面的实证研究提供了对本文提议的属性的洞察力,并证明了这些提议对真实世界的轨迹数据是有效和高效的。

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