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Detecting spatiotemporal extents of traffic congestion: a density-based moving object clustering approach

机译:检测交通拥堵的时空范围:基于密度的移动物体聚类方法

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摘要

Traffic congestion detection poses challenges in spatiotemporal data mining and intelligent transportation research. Existing studies primarily detect traffic congestion based on the speed estimation of traffic flows. Such detection techniques may overlook the formation of traffic congestion in space and time. This research proposes a density-based approach to moving object clustering that extracts the spatiotemporal extents of traffic congestion in three steps. The first step applies a map-matching strategy to project original trajectory points in a planar space onto a road network space and segments the trajectories into consecutive time windows. In the second step, we statistically detect moving clusters with significantly high-density subject to network constrained clustering. The final third step determines moving clusters indicative of traffic congestion through the analysis of both vehicle speed and time spans. Comparative experiments on both simulated trajectories and the real-life taxi trajectories in Wuchang demonstrate that the proposed method outperforms other methods through quantitative evaluations using three indicators, i.e. the precision, recall and F1 value. The proposed approach can illustrate the spatiotemporal regularities of traffic congestion, which can inform dynamic route planning and network design optimization.
机译:交通拥堵检测在时空数据挖掘和智能交通研究中存在挑战。现有研究主要根据交通流量的速度估计来检测交通拥堵。这种检测技术可以忽略空间和时间的交通拥堵的形成。该研究提出了一种基于密度的方法来移动对象聚类,以三个步骤提取交通拥堵的时空范围。第一步将地图匹配策略应用于将平面空间中的原始轨迹点投影到道路网络空间并将轨迹分段到连续时间窗口。在第二步中,我们在统计上检测具有明显高密度的移动簇对网络受限聚类。最后的第三步是通过对车速和时间跨度的分析来确定表明交通拥堵的移动簇。武昌的模拟轨迹的比较实验和武昌的现实寿命出租车轨迹表明,所提出的方法通过使用三个指标的定量评估优于其他方法,即精度,召回和F1值。所提出的方法可以说明交通拥堵的时空规律,可以为动态路线规划和网络设计优化提供信息。

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