Protecting Location Privacy of Users Based on Trajectory Obfuscation in Mobile Crowdsensing

Zhigang Gao, Yucai Huang, Leilei Zheng,Huijuan Lu,Bo Wu,Jianhui Zhang

IEEE Transactions on Industrial Informatics(2022)

引用 11|浏览13
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摘要
In mobile crowdsensing activities, it is usually necessary for participants to upload sensing data and related locations. The existing location privacy-preserving mechanisms cannot well protect a user's trajectory privacy because attackers can mine the user's trajectory features through data analysis techniques. Aiming at the trajectory privacy protection problem, this article proposes a differential location privacy-preserving mechanism based on trajectory obfuscation (LPMT). LPMT first extracts the stay points as the features of a trajectory based on the sliding window algorithm, and then obfuscates each stay point to a target obfuscation subregion through the exponential mechanism, and finally performs the Laplace sampling in the target obfuscation subregion to obtain the obfuscated GPS points. Compared with the baseline mechanisms, LPMT can reduce data quality loss by more than 20% while providing the same level of obfuscation quality, which indicates that LPMT has the advantages of strong security and high quality of service.
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关键词
Differential location privacy,exponential mechanism,mobile crowdsensing,trajectory obfuscation
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