Real-time detection and classification of traffic jams from probe data

Bo Xu, Tiffany Barkley, Andrew P. Lewis, Jane Macfarlane, D. Pietrobon, Matei Stroila
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引用次数: 6

Abstract

In this paper we present our experience on detecting and classifying traffic jams in real time from probe data. We classify traffic jams at two levels. At a higher level, we classify traffic jams into recurring and non-recurring jams. Then at a lower level we identify accidents out of non-recurring jams based on features that characterize upstream and downstream traffic patterns. Accidents are highly unpredictable and usually create heavy and long lasting congestion, and therefore are particularly worth detecting. We discuss the challenges of detecting accidents in real time as well as our approaches and results.
从探针数据实时检测和分类交通阻塞
本文介绍了利用探测数据实时检测和分类交通阻塞的经验。我们把交通堵塞分为两级。在更高的层次上,我们把交通堵塞分为经常性和非经常性。然后,在较低的层次上,我们根据上下游交通模式的特征,从非重复性拥堵中识别事故。事故是高度不可预测的,通常会造成严重和持久的拥堵,因此特别值得注意。我们讨论了实时检测事故的挑战,以及我们的方法和结果。
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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