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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >LOCAL MAXIMUM DENSITY APPROACH FOR SMALL-SCALE CLUSTERING OF URBAN TAXI STOPS
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LOCAL MAXIMUM DENSITY APPROACH FOR SMALL-SCALE CLUSTERING OF URBAN TAXI STOPS

机译:城市出租车停靠站小规模聚类的局部最大密度方法

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摘要

Taxi trajectory data contains the detailed spatial and temporal traveling information of urban residents. By using a clustering algorithm, the hotspots’ distributions of pick-up and drop-off points can be extracted to explore the patterns of taxi traveling behaviors and its relationship with urban environment. Comparing with traditional methods that determine hotspots at a relatively large scale, we propose an approach to detect small-scale hotspots, so called docking points, to represent the local clusters in both sparse and dense stops areas. In this method, we divide the research area into grids and extract the docking points by finding local maximums of a certain range. The extracted docking points are classified into five levels for the subsequent analysis. Finally, to uncover detail characteristics of taxi mobility patterns, we analyze the distributions of docking points from three aspects – the overall, by day of the week, and by time of the day.
机译:出租车轨迹数据包含城市居民的详细时空旅行信息。通过使用聚类算法,可以提取接送点的热点分布,以探索出租车行驶行为的模式及其与城市环境的关系。与在较大范围内确定热点的传统方法相比,我们提出了一种检测小规模热点的方法,即所谓的停靠点,以表示稀疏和密集站点区域中的局部集群。在这种方法中,我们将研究区域划分为网格,并通过找到特定范围的局部最大值来提取对接点。提取的对接点分为五个级别,用于后续分析。最后,为了揭示出租车出行方式的详细特征,我们从三个方面分析了停靠点的分布-总体,按星期几和按时间划分。

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