Trajectories for novel and detailed traffic information

Benjamin B. Krogh, O. Andersen, K. Torp
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引用次数: 16

Abstract

Trajectories based on GPS tracks have been studied for a number of years but only to a limited degree been used for analyzing and monitoring traffic. This paper shows how novel and important information about traffic can be computed from trajectories. Concretely the paper proposes to compute the central metric free-flow speed from trajectories, instead of using point-based measurements such as induction-loops. This free-flow speed is widely used to compute and monitor the congestion level. The paper argues that the actual travel-time is a more accurate metric. The paper suggests a novel approach to analyzing individual intersections that enables traffic analysts to compute queue lengths and estimated time to pass an intersection. Finally, the paper uses associative rule mining for evaluating green waves on road stretches. Such information can be used to verify that signalized intersections are correctly coordinated, and navigational device manufacturers to advice drivers in real-time on expected behavior of signalized intersections. The main conclusion is that trajectories can provide novel insight into the actual traffic situation that is not possible using existing approaches. Further, extracting this information requires no expensive changes to the road-network infrastructure, which is a problem with the technologies currently used.
新的和详细的交通信息的轨迹
基于GPS轨迹的轨迹研究已有数年,但仅在有限程度上用于分析和监测交通。本文展示了如何从轨迹中计算交通的新颖和重要信息。具体地说,本文提出从轨迹计算中心度量自由流速度,而不是使用感应回路等基于点的测量方法。这种自由流速度被广泛用于计算和监控拥塞水平。本文认为,实际旅行时间是一个更准确的度量。本文提出了一种分析单个交叉口的新方法,使交通分析人员能够计算队列长度和通过交叉口的估计时间。最后,利用关联规则挖掘对道路延伸段的绿波进行评价。这些信息可以用来验证信号交叉口是否正确协调,导航设备制造商可以实时向驾驶员提供信号交叉口的预期行为建议。主要结论是,轨迹可以提供对实际交通状况的新颖见解,这是使用现有方法无法实现的。此外,提取这些信息不需要对道路网络基础设施进行昂贵的改变,这是目前使用的技术的一个问题。
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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