Reducing Uncertainty of Low-Sampling-Rate Trajectories

Kai Zheng, Yu Zheng, Xing Xie, Xiaofang Zhou
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引用次数: 209

Abstract

The increasing availability of GPS-embedded mobile devices has given rise to a new spectrum of location-based services, which have accumulated a huge collection of location trajectories. In practice, a large portion of these trajectories are of low-sampling-rate. For instance, the time interval between consecutive GPS points of some trajectories can be several minutes or even hours. With such a low sampling rate, most details of their movement are lost, which makes them difficult to process effectively. In this work, we investigate how to reduce the uncertainty in such kind of trajectories. Specifically, given a low-sampling-rate trajectory, we aim to infer its possible routes. The methodology adopted in our work is to take full advantage of the rich information extracted from the historical trajectories. We propose a systematic solution, History based Route Inference System (HRIS), which covers a series of novel algorithms that can derive the travel pattern from historical data and incorporate it into the route inference process. To validate the effectiveness of the system, we apply our solution to the map-matching problem which is an important application scenario of this work, and conduct extensive experiments on a real taxi trajectory dataset. The experiment results demonstrate that HRIS can achieve higher accuracy than the existing map-matching algorithms for low-sampling-rate trajectories.
降低低采样率轨迹的不确定性
嵌入式gps移动设备的日益普及,催生了一系列新的基于位置的服务,这些服务积累了大量的位置轨迹。在实际应用中,这些轨迹有很大一部分是低采样率的。例如,某些轨迹的连续GPS点之间的时间间隔可能是几分钟甚至几小时。在如此低的采样率下,它们的大部分运动细节都丢失了,这使得它们难以有效地处理。在这项工作中,我们研究了如何减少这类轨迹的不确定性。具体来说,给定一个低采样率的轨迹,我们的目标是推断其可能的路径。在我们的工作中采用的方法是充分利用从历史轨迹中提取的丰富信息。我们提出了一个系统的解决方案,基于历史的路线推理系统(HRIS),它涵盖了一系列新的算法,可以从历史数据中导出旅行模式并将其纳入路线推理过程。为了验证系统的有效性,我们将我们的解决方案应用于地图匹配问题,这是本工作的一个重要应用场景,并在真实的出租车轨迹数据集上进行了大量的实验。实验结果表明,对于低采样率轨迹,HRIS比现有的地图匹配算法具有更高的精度。
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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