Location Privacy-Preserving Task Recommendation with Geometric Range Query in Mobile Crowdsensing

Chuan Zhang, Liehuang Zhu*, Chang Xu, Jianbing Ni, Cheng Huang, Xuemin Shen

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

57 引用 (Scopus)

摘要

In mobile crowdsensing, location-based task recommendation requires each data requester to submit a task-related geometric range to crowdsensing service providers such that they can match suitable workers within this range. Generally, a trusted server (i.e., database owner) should be deployed to protect location privacy during the process, which is not desirable in practice. In this paper, we propose the location privacy-preserving task recommendation (PPTR) schemes with geometric range query in mobile crowdsensing without the trusted database owner. Specifically, we first propose a PPTR scheme with linear search complexity, named PPTR-L, based on a two-server model. By leveraging techniques of polynomial fitting and randomizable matrix multiplication, PPTR-L enables the service provider to find the workers located in the data requester's arbitrary geometric query range without disclosing the sensitive location privacy. To further improve query efficiency, we design a novel data structure for task recommendation and propose PPTR-F to achieve faster-than-linear search complexity. Through security analysis, it is shown that our schemes can protect the confidentiality of workers' locations and data requesters' queries. Extensive experiments are performed to demonstrate that our schemes can achieve high computational efficiency in terms of geometric range query.

源语言英语
页(从-至)4410-4425
页数16
期刊IEEE Transactions on Mobile Computing
21
12
DOI
出版状态已出版 - 1 12月 2022

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