Creating a novel approach for mobile positioning based on CDR data
Date
2020
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
User geographical positioning is important for many fields that rely on passive geolocation
analytics, like targeted marketing, urban and rural transportation planning,
public health, etc. A new popular type of data that is commonly used for passive mobility
analysis is mobile data or the so-called Call Detail Records (CDR). The CDR events
are stored by mobile operators for the primary purpose of billing. They are generated
every time we use SMS, call, or internet services. CDR data events are becoming more
frequent due to the lower costs of using mobile services and smartphones becoming a
necessary tool in our daily life. However, CDR data has two major drawbacks: temporal
and spatial uncertainties. Although the first problem is widely covered by trajectory
reconstruction techniques, the second problem still remains challenging. Hence, in this
thesis, we propose the usage of a new method based on the Sequential Monte Carlo
algorithms called particle filtering. The particle filtering application implemented in this
thesis models the trajectory movement to predict the user’s position in a given area. This
method uses CDR data and solely the information related to the area of the coverage
from mobile towers. Our goal is to evaluate if this nonlinear method can out-perform the
existent linear methods like Switching Kalman Filter. Therefore, the model performance
and the effects of the parameters on accuracy were evaluated in controlled experimental
settings. Additionally, experiments were performed on a dataset from a real case study
and compared with the results achieved by existing methods. Finally, the usability of the
method and future work is discussed.
Description
Keywords
mobile data, particle filtering, location prediction, trajectory prediction