基于蜂窝网络数据的与人类移动相一致的时空路径估计

H. Kanasugi, Y. Sekimoto, Mori Kurokawa, Takafumi Watanabe, S. Muramatsu, R. Shibasaki
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引用次数: 21

摘要

在各种服务和研究领域,持续不断的个人职位信息引起了人们的关注。近年来,许多研究将移动电话的通信历史(cdr: call detail records)应用于位置获取。虽然通过手机的日常使用,话单积累了大尺度和长期的数据,但话单的空间分辨率低于现有的定位技术。因此,根据人类行为模型插值这些稀疏cdr的时空位置,将有利于服务和研究。在本文中,我们提出了一种新的方法来补偿CDR跟踪位置的缺点。我们使用使用公路和铁路网络插值的行程模式在时空域中生成尽可能多的候选路线,并从中选择最可能的路线。旅行模式是在cdr中从个人位置历史中检测到的停留地点之间的可行组合。最可能的路线可以通过比较候选路线和在目标日观察到的cdr来估计。我们还展示了使用实验调查中获得的cdr和GPS日志对我们的方法的评估。
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Spatiotemporal route estimation consistent with human mobility using cellular network data
Continuous personal position information has been attracting attention in a variety of service and research areas. In recent years, many studies have applied the telecommunication histories of mobile phones (CDRs: call detail records) to position acquisition. Although large-scale and long-term data are accumulated from CDRs through everyday use of mobile phones, the spatial resolution of CDRs is lower than that of existing positioning technologies. Therefore, interpolating spatiotemporal positions of such sparse CDRs in accordance with human behavior models will facilitate services and researches. In this paper, we propose a new method to compensate for CDR drawbacks in tracking positions. We generate as many candidate routes as possible in the spatiotemporal domain using trip patterns interpolated using road and railway networks and select the most likely route from them. Trip patterns are feasible combinations between stay places that are detected from individual location histories in CDRs. The most likely route could be estimated through comparing candidate routes to observed CDRs during a target day. We also show the assessment of our method using CDRs and GPS logs obtained in the experimental survey.
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