Inferring human activities from GPS tracks

Barbara Furletti, Paolo Cintia, C. Renso, L. Spinsanti
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引用次数: 119

Abstract

The collection of huge amount of tracking data made possible by the widespread use of GPS devices, enabled the analysis of such data for several applications domains, ranging from traffic management to advertisement and social studies. However, the raw positioning data, as it is detected by GPS devices, lacks of semantic information since this data does not natively provide any additional contextual information like the places that people visited or the activities performed. Traditionally, this information is collected by hand filled questionnaire where a limited number of users are asked to annotate their tracks with the activities they have done. With the purpose of getting large amount of semantically rich trajectories, we propose an algorithm for automatically annotating raw trajectories with the activities performed by the users. To do this, we analyse the stops points trying to infer the Point Of Interest (POI) the user has visited. Based on the category of the POI and a probability measure based on the gravity law, we infer the activity performed. We experimented and evaluated the method in a real case study of car trajectories, manually annotated by users with their activities. Experimental results are encouraging and will drive our future works.
根据GPS轨迹推断人类活动
由于全球定位系统设备的广泛使用,大量跟踪数据的收集成为可能,这使得从交通管理到广告和社会研究等几个应用领域对这些数据进行分析成为可能。然而,GPS设备检测到的原始定位数据缺乏语义信息,因为这些数据本身不提供任何额外的上下文信息,比如人们去过的地方或进行的活动。传统上,这些信息是通过手工填写问卷收集的,其中要求有限数量的用户用他们所做的活动注释他们的轨迹。为了获得大量语义丰富的轨迹,我们提出了一种用用户执行的活动自动标注原始轨迹的算法。为了做到这一点,我们分析停止点,试图推断用户访问过的兴趣点(POI)。根据POI的类别和基于重力定律的概率度量,我们推断了所执行的活动。我们在汽车轨迹的真实案例研究中进行了实验和评估,用户用他们的活动手动注释了该方法。实验结果令人鼓舞,并将推动我们未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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