4.5 Article

Privacy-Preserving Trajectory Data Publishing by Dynamic Anonymization with Bounded Distortion

Journal

Publisher

MDPI
DOI: 10.3390/ijgi10020078

Keywords

trajectory data; data publishing; privacy-preserving; bounded distortion; attack preventing

Funding

  1. Key-Area Research and Development Program of Guangdong Province, China [2020B010164003]
  2. National Key R&D Program of China [2017YFB0203201]
  3. Science and Technology Program of Guangdong Province, China [2017A010101039]

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This paper proposes a dynamic anonymization method for trajectory privacy protection, which mixes individual trajectories in a localized manner to form synthetic trajectory data set with bounded distortion for publishing, protecting location information privacy associated with individuals and ensuring guaranteed utility of the published data. Results show that the proposed method achieves better data utilization performance compared to existing methods without compromising data security against attacks.
Publication of trajectory data that contain rich information of vehicles in the dimensions of time and space (location) enables online monitoring and supervision of vehicles in motion and offline traffic analysis for various management tasks. However, it also provides security holes for privacy breaches as exposing individual's privacy information to public may results in attacks threatening individual's safety. Therefore, increased attention has been made recently on the privacy protection of trajectory data publishing. However, existing methods, such as generalization via anonymization and suppression via randomization, achieve protection by modifying the original trajectory to form a publishable trajectory, which results in significant data distortion and hence a low data utility. In this work, we propose a trajectory privacy-preserving method called dynamic anonymization with bounded distortion. In our method, individual trajectories in the original trajectory set are mixed in a localized manner to form synthetic trajectory data set with a bounded distortion for publishing, which can protect the privacy of location information associated with individuals in the trajectory data set and ensure a guaranteed utility of the published data both individually and collectively. Through experiments conducted on real trajectory data of Guangzhou City Taxi statistics, we evaluate the performance of our proposed method and compare it with the existing mainstream methods in terms of privacy preservation against attacks and trajectory data utilization. The results show that our proposed method achieves better performance on data utilization than the existing methods using globally static anonymization, without trading off the data security against attacks.

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