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首页> 外文期刊>Visualization and Computer Graphics, IEEE Transactions on >TrajGraph: A Graph-Based Visual Analytics Approach to Studying Urban Network Centralities Using Taxi Trajectory Data
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TrajGraph: A Graph-Based Visual Analytics Approach to Studying Urban Network Centralities Using Taxi Trajectory Data

机译:TrajGraph:一种基于图的视觉分析方法,利用出租车轨迹数据研究城市网络中心

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摘要

We propose TrajGraph, a new visual analytics method, for studying urban mobility patterns by integrating graph modeling and visual analysis with taxi trajectory data. A special graph is created to store and manifest real traffic information recorded by taxi trajectories over city streets. It conveys urban transportation dynamics which can be discovered by applying graph analysis algorithms. To support interactive, multiscale visual analytics, a graph partitioning algorithm is applied to create region-level graphs which have smaller size than the original street-level graph. Graph centralities, including Pagerank and betweenness, are computed to characterize the time-varying importance of different urban regions. The centralities are visualized by three coordinated views including a node-link graph view, a map view and a temporal information view. Users can interactively examine the importance of streets to discover and assess city traffic patterns. We have implemented a fully working prototype of this approach and evaluated it using massive taxi trajectories of Shenzhen, China. TrajGraph's capability in revealing the importance of city streets was evaluated by comparing the calculated centralities with the subjective evaluations from a group of drivers in Shenzhen. Feedback from a domain expert was collected. The effectiveness of the visual interface was evaluated through a formal user study. We also present several examples and a case study to demonstrate the usefulness of TrajGraph in urban transportation analysis.
机译:我们提出了TrajGraph,这是一种新的可视化分析方法,它通过将图形建模和可视化分析与出租车轨迹数据相集成来研究城市交通方式。创建一个特殊的图来存储和显示出租车轨迹在城市街道上记录的真实交通信息。它传达了可以通过应用图分析算法发现的城市交通动态。为了支持交互式多尺度视觉分析,应用了图分区算法来创建区域级图,该区域级图的大小小于原始街道级图的大小。计算图形中心,包括Pagerank和中间性,以表征不同城市区域随时间变化的重要性。中心点通过三个协作视图(包括节点链接图视图,地图视图和时间信息视图)可视化。用户可以交互检查街道的重要性,以发现和评估城市交通模式。我们已经实施了这种方法的完整工作原型,并使用中国深圳的大量滑行轨迹对其进行了评估。通过将计算出的中心点与深圳一群驾驶员的主观评价进行比较,来评估TrajGraph揭示城市街道重要性的能力。收集了领域专家的反馈。通过正式的用户研究评估了视觉界面的有效性。我们还提供了一些示例和一个案例研究,以证明TrajGraph在城市交通分析中的有用性。

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