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UrbanMotion: Visual Analysis of Metropolitan-Scale Sparse Trajectories

机译:UrbanMotion:大都市规模稀疏轨迹的视觉分析

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Visualizing massive scale human movement in cities plays an important role in solving many of the problems that modern cities face (e.g., traffic optimization, business site configuration). In this article, we study a big mobile location dataset that covers millions of city residents, but is temporally sparse on the trajectory of individual user. Mapping sparse trajectories to illustrate population movement poses several challenges from both analysis and visualization perspectives. In the literature, there are a few techniques designed for sparse trajectory visualization; yet they do not consider trajectories collected from mobile apps that possess long-tailed sparsity with record intervals as long as hours. This article introduces UrbanMotion, a visual analytics system that extends the original wind map design by supporting map-matched local movements, multi-directional population flows, and population distributions. Effective methods are proposed to extract and aggregate population movements from dense parts of the trajectories leveraging their long-tailed sparsity. Both characteristic and anomalous patterns are discovered and visualized. We conducted three case studies, one comparative experiment, and collected expert feedback in the application domains of commuting analysis, event detection, and business site configuration. The study result demonstrates the significance and effectiveness of our system in helping to complete key analytics tasks for urban users.
机译:可视化城市的大规模人类运动在解决现代城市面部的许多问题(例如,交通优化,商业站点配置)中起着重要作用。在本文中,我们研究了一个大型移动地点数据集,涵盖了数百万城市居民,但在个人用户的轨迹上暂时稀疏。绘制稀疏轨迹来说明人口运动从分析和可视化视角都构成了几个挑战。在文献中,有一些专为稀疏轨迹可视化设计的技术;然而,他们不考虑从移动应用收集的轨迹,这些轨迹具有长尾稀疏性,只要几个小时就可以获得历史记录间隔。本文介绍了UrbanMotion,这是一种视觉分析系统,通过支持地图匹配的本地运动,多向群体流量和人口分布来扩展原始风映射设计。提出了有效的方法来提取和聚集群体的群体的群体运动,利用它们的长尾稀疏性。发现和可视化特征和异常模式。我们在通勤分析,事件检测和商业站点配置的应用领域进行了三种案例研究,一个比较实验和收集的专家反馈。该研究结果表明了我们系统在帮助城市用户的关键分析任务方面的重要性和有效性。

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