Enabling Strong Privacy Preservation and Accurate Task Allocation for Mobile Crowdsensing
June 11, 2018 Β· Declared Dead Β· π IEEE Transactions on Mobile Computing
"No code URL or promise found in abstract"
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Authors
Jianbing Ni, Kuan Zhang, Qi Xia, Xiaodong Lin, Xuemin Shen
arXiv ID
1806.04057
Category
cs.CR: Cryptography & Security
Citations
159
Venue
IEEE Transactions on Mobile Computing
Last Checked
4 months ago
Abstract
Mobile crowdsensing engages a crowd of individuals to use their mobile devices to cooperatively collect data about social events and phenomena for special interest customers. It can reduce the cost on sensor deployment and improve data quality with human intelligence. To enhance data trustworthiness, it is critical for service provider to recruit mobile users based on their personal features, e.g., mobility pattern and reputation, but it leads to the privacy leakage of mobile users. Therefore, how to resolve the contradiction between user privacy and task allocation is challenging in mobile crowdsensing. In this paper, we propose SPOON, a strong privacy-preserving mobile crowdsensing scheme supporting accurate task allocation from geographic information and credit points of mobile users. In SPOON, the service provider enables to recruit mobile users based on their locations, and select proper sensing reports according to their trust levels without invading user privacy. By utilizing proxy re-encryption and BBS+ signature, sensing tasks are protected and reports are anonymized to prevent privacy leakage. In addition, a privacy-preserving credit management mechanism is introduced to achieve decentralized trust management and secure credit proof for mobile users. Finally, we show the security properties of SPOON and demonstrate its efficiency on computation and communication.
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