Authors
Samaneh Mahdavifar, Mahdi Abadi, Mohsen Kahani, Hassan Mahdikhani
Publication date
2012/11/21
Book
Network and System Security
Volume
7645
Pages
149–165
Publisher
Springer
Description
With the growing prevalence of location-aware devices, the amount of trajectories generated by moving objects has been dramatically increased, resulting in various novel data mining applications. Since trajectories may contain sensitive information about their moving objects, so they ought to be anonymized before making them accessible to the public. Many existing approaches for trajectory anonymization consider the same privacy level for all moving objects, whereas different moving objects may have different privacy requirements. In this paper, we propose a novel greedy clustering-based approach for anonymizing trajectory data in which the privacy requirements of moving objects are not necessarily the same. We first assign a privacy level to each trajectory based on the privacy requirement of its moving object. We then partition trajectories into a set of fixed-radius clusters based on the EDR distance …
Total citations
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Scholar articles
S Mahdavifar, M Abadi, M Kahani, H Mahdikhani - Network and System Security: 6th International …, 2012