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首页> 外文期刊>ISPRS International Journal of Geo-Information >Anomalous Urban Mobility Pattern Detection Based on GPS Trajectories and POI Data
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Anomalous Urban Mobility Pattern Detection Based on GPS Trajectories and POI Data

机译:基于GPS轨迹和POI数据的城市交通异常模式检测

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Anomalous urban mobility pattern refers to abnormal human mobility flow in a city. Anomalous urban mobility pattern detection is important in the study of urban mobility. In this paper, a framework is proposed to identify anomalous urban mobility patterns based on taxi GPS trajectories and Point of Interest (POI) data. In the framework, functional regions are first generated based on the distribution of POIs by the DBSCAN clustering algorithm. A Weighted Term Frequency-Inverse Document Frequency (WTF-IDF) method is proposed to identify function values in each region. Then, the Origin-Destination (OD) of trips between functional regions is extracted from GPS trajectories to detect anomalous urban mobility patterns. Mobility vectors are established for each time interval based on the OD of trips and are classified into clusters by the mean shift algorithm. Abnormal urban mobility patterns are identified by processing the mobility vectors. A case study in the city of Wuhan, China, is conducted; the experimental results show that the proposed method can effectively identify daily and hourly anomalous urban mobility patterns.
机译:城市人口流动异常是指城市人口流动异常。城市交通异常模式检测在城市交通研究中很重要。本文提出了一个框架,用于基于出租车GPS轨迹和兴趣点(POI)数据识别异常的城市交通方式。在该框架中,首先通过DBSCAN聚类算法基于POI的分布生成功能区域。提出了一种加权词频逆文档频率(WTF-IDF)方法来识别每个区域中的函数值。然后,从GPS轨迹中提取功能区域之间行程的起点(OD),以检测异常的城市交通方式。根据行程的OD为每个时间间隔建立移动性矢量,并通过均值平移算法将其分为几类。通过处理交通矢量来识别异常的城市交通模式。在中国武汉市进行了案例研究;实验结果表明,该方法可以有效地识别出城市交通的日,小时异常。

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