City-wide Traffic Volume Inference with Loop Detector Data and Taxi Trajectories

Chuishi Meng, Xiuwen Yi, Lu Su, Jing Gao, Yu Zheng
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引用次数: 83

Abstract

The traffic volume on road segments is a vital property of the transportation efficiency. City-wide traffic volume information can benefit people with their everyday life, and help the government on better city planning. However, there are no existing methods that can monitor the traffic volume of every road, because they are either too expensive or inaccurate. Fortunately, nowadays we can collect a large amount of urban data which provides us the opportunity to tackle this problem. In this paper, we propose a novel framework to infer the city-wide traffic volume information with data collected by loop detectors and taxi trajectories. Although these two data sets are incomplete, sparse and from quite different domains, the proposed spatio-temporal semi-supervised learning model can take the full advantages of both data and accurately infer the volume of each road. In order to provide a better interpretation on the inference results, we also derive the confidence of the inference based on spatio-temporal properties of traffic volume. Real-world data was collected from 155 loop detectors and 6,918 taxis over a period of 17 days in Guiyang China. The experiments performed on this large urban data set demonstrate the advantages of the proposed framework on correctly inferring the traffic volume in a city-wide scale.
基于环路检测器数据和出租车轨迹的城市交通量推断
路段交通量是衡量交通运输效率的重要指标。城市范围内的交通量信息可以使人们的日常生活受益,并帮助政府更好地进行城市规划。然而,目前还没有能够监控每条道路交通量的方法,因为它们要么太昂贵,要么不准确。幸运的是,现在我们可以收集大量的城市数据,这为我们提供了解决这个问题的机会。在本文中,我们提出了一个新的框架,通过环路检测器和出租车轨迹收集的数据来推断城市交通量信息。虽然这两个数据集是不完整的,稀疏的,并且来自不同的领域,但所提出的时空半监督学习模型可以充分利用这两个数据集的优势,准确地推断出每条道路的体积。为了更好地解释推理结果,我们还基于交通量的时空特性推导了推理的置信度。真实世界的数据是在中国贵阳17天的时间里从155个环路探测器和6918辆出租车中收集的。在这个大型城市数据集上进行的实验表明,所提出的框架在正确推断城市范围内的交通量方面具有优势。
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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