A review of urban computing for mobile phone traces: current methods, challenges and opportunities

Shan Jiang, G. Fiore, Yingxiang Yang, J. Ferreira, Emilio Frazzoli, Marta C. González
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引用次数: 266

Abstract

In this work, we present three classes of methods to extract information from triangulated mobile phone signals, and describe applications with different goals in spatiotemporal analysis and urban modeling. Our first challenge is to relate extracted information from phone records (i.e., a set of time-stamped coordinates estimated from signal strengths) with destinations by each of the million anonymous users. By demonstrating a method that converts phone signals into small grid cell destinations, we present a framework that bridges triangulated mobile phone data with previously established findings obtained from data at more coarse-grained resolutions (such as at the cell tower or census tract levels). In particular, this method allows us to relate daily mobility networks, called motifs here, with trip chains extracted from travel diary surveys. Compared with existing travel demand models mainly relying on expensive and less-frequent travel survey data, this method represents an advantage for applying ubiquitous mobile phone data to urban and transportation modeling applications. Second, we present a method that takes advantage of the high spatial resolution of the triangulated phone data to infer trip purposes by examining semantic-enriched land uses surrounding destinations in individual's motifs. In the final section, we discuss a portable computational architecture that allows us to manage and analyze mobile phone data in geospatial databases, and to map mobile phone trips onto spatial networks such that further analysis about flows and network performances can be done. The combination of these three methods demonstrate the state-of-the-art algorithms that can be adapted to triangulated mobile phone data for the context of urban computing and modeling applications.
回顾城市计算的移动电话痕迹:目前的方法,挑战和机遇
在这项工作中,我们提出了三种从三角测量手机信号中提取信息的方法,并描述了在时空分析和城市建模中不同目标的应用。我们的第一个挑战是将从电话记录中提取的信息(即,从信号强度估计的一组带时间戳的坐标)与百万匿名用户中的每个用户的目的地联系起来。通过演示一种将电话信号转换为小型网格蜂窝目的地的方法,我们提出了一个框架,该框架将三角测量的移动电话数据与先前从更粗粒度分辨率(例如在蜂窝塔或人口普查区级别)的数据中获得的发现连接起来。特别是,这种方法使我们能够将日常移动网络(这里称为主题)与从旅行日记调查中提取的旅行链联系起来。与现有的主要依赖于昂贵且频率较低的出行调查数据的出行需求模型相比,该方法具有将无处不在的手机数据应用于城市和交通建模应用的优势。其次,我们提出了一种方法,该方法利用三角测量电话数据的高空间分辨率,通过检查个人主题中目的地周围语义丰富的土地使用来推断旅行目的。在最后一节中,我们讨论了一种便携式计算架构,它允许我们管理和分析地理空间数据库中的移动电话数据,并将移动电话行程映射到空间网络上,以便对流量和网络性能进行进一步分析。这三种方法的结合展示了最先进的算法,可以适应城市计算和建模应用背景下的三角测量移动电话数据。
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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