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Visual exploration of mobility dynamics based on multi-source mobility datasets and POI information

机译:基于多源流动性数据集和POI信息的流动性可视化探索

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摘要

Learning more about human mobility is crucial for official decision makers and urban planners. Mobility datasets characterize human daily travel behaviors. Most current researches only studied human dynamics from one kind of mobility dataset. However, people may use different means of transportation to different places for different purposes. Besides, the spatial distributions of different types of point of interests (POIs) reflect the land-use types. How to jointly analyze the multi-source mobility datasets and POI information is a great challenge. In this paper, we adopt multi-source datasets, including taxi dataset, public bicycle system dataset and POI dataset, and propose a visual analytics methodology to explore human mobility dynamics insightfully. Two region-feature-time tensors are constructed first, and a tensor decomposition method is employed to classify the mobility patterns automatically. Then, a new POI-mobility glyph is designed to visualize multi-source datasets in a compact manner. Several interactive visual views are also designed to visualize the spatiotemporal patterns from global, regional and locational perspectives. Case studies based on real-world datasets demonstrate the effectiveness of our method, which supports the visual reasoning of trip purposes and mixed urban functions.
机译:了解更多有关人员流动的信息对于官方决策者和城市规划者至关重要。出行数据集是人类日常出行行为的特征。当前大多数研究仅从一种流动性数据集中研究了人类动力学。但是,人们出于不同的目的可能会使用不同的交通工具到不同的地方。此外,不同类型的兴趣点(POI)的空间分布反映了土地利用类型。如何联合分析多源移动性数据集和POI信息是一个巨大的挑战。在本文中,我们采用了多源数据集,包括出租车数据集,公共自行车系统数据集和POI数据集,并提出了一种可视化分析方法来深刻地探索人类的机动性。首先构造两个区域特征时间张量,并采用张量分解方法对迁移率模式进行自动分类。然后,设计了一种新的POI移动性字形,以紧凑的方式可视化多源数据集。还设计了几种交互式视觉视图,以从全局,区域和位置的角度可视化时空模式。基于现实世界数据集的案例研究证明了我们方法的有效性,该方法支持旅行目的和城市功能混合的视觉推理。

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