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Frontiers of Computer Science

ISSN 2095-2228

ISSN 2095-2236(Online)

CN 10-1014/TP

Postal Subscription Code 80-970

2018 Impact Factor: 1.129

Front. Comput. Sci.    2014, Vol. 8 Issue (2) : 298-315    https://doi.org/10.1007/s11704-013-3009-2
RESEARCH ARTICLE
MViewer: mobile phone spatiotemporal data viewer
Jiansu PU1,*(),Siyuan LIU2,Panpan XU1,Huamin QU1,Lionel M. NI1
1. Department of Computer Science, Hong Kong University of Science and Technology, Hong Kong 999077, China
2. iLab, Heinz College, Carnegie Mellon University, Pittsburgh PA 15601, USA
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Abstract

Nowadays movement patterns and people’s behavioral models are needed for traffic engineers and city planners. These observations could be used to reason about mobility and its sustainability and to support decision makers with reliable information. The very same knowledge about human diaspora and behavior extracted from these data is also valuable to the urban planner, so as to localize new services, organize logistics systems and to detect changes as they occur in the movement behavior. Moreover, it is interesting to investigate movement in places like a shopping area or a working district either for commercial purposes or for improving the service quality. These kinds of tracking data are made available by wireless and mobile communication technologies. It is now possible to record and collect a large amount of mobile phone calls in a city. Technologies for object tracking have recently become affordable and reliable and hence we were able to collect mobile phone data from a city in China from January 1, 2008 to December 31, 2008. The large amount of phone call records from mobile operators can be considered as life mates and sensors of persons to inform how many people are present in any given area and how many are entering or leaving. Each phone call record usually contains the caller and callee IDs, date and time, and the base station where the phone calls are made. As mobile phones are widely used in our daily life, many human behaviors can be revealed by analyzing mobile phone data. Through mobile phones, we can learn the information about locations, communications between mobile phone users during their daily lives.

In this work, we propose a comprehensive visual analysis system named as MViewer, Mobile phone spatiotemporal data Viewer, which is the first system to visualize and analyze the population’s mobility patterns from millions of phone call records. Our system consists of three major components: 1) visual analysis of user groups in a base station; 2) visual analysis of the mobility patterns on different user groups making phone calls in certain base stations; 3) visual analysis of handoff phone call records. Some well-established visualization techniques such as parallel coordinates and pixel-based representations have been integrated into our system. We also develop a novel visualization schemes, Voronoi-diagram-based visual encoding to reveal the unique features of mobile phone data. We have applied our system to real mobile phone datasets that are kindly provided by our project partners and obtained some interesting findings regarding people’s mobility patterns.

Keywords visual analysis      mobility pattern      mobile phone     
Corresponding Author(s): Jiansu PU   
Issue Date: 24 June 2014
 Cite this article:   
Jiansu PU,Siyuan LIU,Panpan XU, et al. MViewer: mobile phone spatiotemporal data viewer[J]. Front. Comput. Sci., 2014, 8(2): 298-315.
 URL:  
https://academic.hep.com.cn/fcs/EN/10.1007/s11704-013-3009-2
https://academic.hep.com.cn/fcs/EN/Y2014/V8/I2/298
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