2007
Other  Open Access

Perturbation-driven anonymization of trajectories

Nergiz M E, Atzori M, Saygin Y

Trajectory k-anonymity  Generalization  Spatio-temporal data mining 

Trajectory datasets are becoming more and more popular due to the massive usage of GPS devices. In this paper, we address privacy issues regarding the identification of individuals in static trajectory datasets. We provide privacy protection by (1) first enforcing k-anonymity, meaning every released information refers to at least k users/trajectories, (2) then reconstructing randomly a representation of the original dataset from the anonymization. We present a utility metric that maximizes the probability of a good representation and propose trajectory anonymization techniques to address time and space sensitive applications. The experimental results over synthetic trajectory datasets show the effectiveness of the proposed approach.



Back to previous page
BibTeX entry
@misc{oai:it.cnr:prodotti:160840,
	title = {Perturbation-driven anonymization of trajectories},
	author = {Nergiz M E and Atzori M and Saygin Y},
	year = {2007}
}