Knowledge-based trajectory completion from sparse GPS samples

Yongni Li, Yangyan Li, D. Gunopulos, L. Guibas
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引用次数: 30

Abstract

Traffic trajectories collected from GPS-enabled mobile devices or vehicles are widely used in urban planning, traffic management, and location based services. Their performance often relies on having dense trajectories. However, due to the power and bandwidth limitation on these devices, collecting dense trajectory is too costly on a large scale. We show that by exploiting structural regularity in large trajectory data, the complete geometry of trajectories can be inferred from sparse GPS samples without information about the underlying road network - a process called trajectory completion. In this paper, we present a knowledge-based approach for completing traffic trajectories. Our method extracts a network of road junctions and estimates traffic flows across junctions. GPS samples within each flow cluster are then used to achieve fine-level completion of individual trajectories. Finally, we demonstrate that our method is effective for trajectory completion on both synthesized and real traffic trajectories. On average 72.7% of real trajectories with sampling rate of 60 seconds/sample are completed without map information. Comparing to map matching, over 89% of points on completed trajectories are within 15 meters from the map matched path.
基于知识的稀疏GPS样本轨迹补全
从具有gps功能的移动设备或车辆收集的交通轨迹广泛用于城市规划、交通管理和基于位置的服务。它们的性能通常依赖于密集的轨迹。然而,由于这些设备的功率和带宽限制,大规模收集密集轨迹的成本太高。我们表明,通过利用大型轨迹数据中的结构规则,可以从稀疏的GPS样本中推断出轨迹的完整几何形状,而不需要有关底层道路网络的信息——这一过程称为轨迹完成。在本文中,我们提出了一种基于知识的方法来完成交通轨迹。我们的方法提取道路交叉口网络并估计交叉口的交通流量。然后使用每个流簇中的GPS样本来实现单个轨迹的精细完成。最后,我们证明了我们的方法对于合成和真实交通轨迹的轨迹补全是有效的。平均72.7%的真实轨迹在没有地图信息的情况下完成,采样率为60秒/样本。与地图匹配相比,完成轨迹上超过89%的点距离地图匹配路径不到15米。
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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