2016
DOI: 10.1109/tmc.2016.2586058
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Differentially Private Location Protection for Worker Datasets in Spatial Crowdsourcing

Abstract: Spatial Crowdsourcing (SC) is a transformative platform that engages individuals in collecting and analyzing environmental, social and other spatio-temporal information. SC outsources spatio-temporal tasks to a set of workers, i.e., individuals with mobile devices that perform the tasks by physically traveling to specified locations. However, current solutions require the workers to disclose their locations to untrusted parties. In this paper, we introduce a framework for protecting location privacy of workers… Show more

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Cited by 95 publications
(96 citation statements)
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References 31 publications
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“…The work in [12] proposed a new privacy preserving smart metering scheme for smart grid, which supports data aggregation, differential privacy, fault tolerance, and rangebased filtering simultaneously. To et al [13] introduced a novel privacy-aware framework for spatial crowdsourcing, which enables the participation of workers without compromising their location privacy. Focusing on the privacy protection of sensitive information in body area networks, the authors in [14,15] proposed different privacy preserving schemes, based on differential privacy model, via a tree structure and dynamic noise thresholds, respectively.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…The work in [12] proposed a new privacy preserving smart metering scheme for smart grid, which supports data aggregation, differential privacy, fault tolerance, and rangebased filtering simultaneously. To et al [13] introduced a novel privacy-aware framework for spatial crowdsourcing, which enables the participation of workers without compromising their location privacy. Focusing on the privacy protection of sensitive information in body area networks, the authors in [14,15] proposed different privacy preserving schemes, based on differential privacy model, via a tree structure and dynamic noise thresholds, respectively.…”
Section: Related Workmentioning
confidence: 99%
“…Differential privacy (DP), a privacy preserving model originated from statistical database, has currently drawn considerable attentions in research communities [10][11][12][13][14][15][16][17] due to (i) its rigorous and provable privacy guarantee and (ii) its assumption of adversaries' arbitrary background knowledge. However, DP actually assumes that the tuples in databases are independent [18].…”
Section: Introductionmentioning
confidence: 99%
“…This problem is considerably more challenging when compared to the problem of privacy-preserving reporting in the pull mode. [29] x [39] x x x N/A N/A x x x Kazemi et al 2011 [16] x (x) x x (x) x x x Vu et al 2012 [36] x [33] x x x (x) (x) x x x Gong et al 2015 [9] x x x (x) (x) x x x Zhang et al 2015 [40] x x x (x) (x) x x x To et al 2016 [32] x [25] x x x (x) x x x Hu et al 2015 [12] x x x (x) x x x Shen et al 2916 [28] x…”
Section: Privacy Countermeasuresmentioning
confidence: 99%
“…Various techniques have been proposed to protect location privacy of workers during task assignment in SC, including cloaking (hide the accurate location in a cloaked region) [17,36,25,12], perturbation (distort the actual location information by adding artificial noise) [33,9,40,32] and encryption [29,28].…”
Section: Protection In the Push Modementioning
confidence: 99%
“…Crowdsourcing data are used for several types of service in open crowdsourcing platforms [27,28]. For example, real-time spatial crowdsourcing data can be used for online monitoring systems for end users, and historical spatial crowdsourcing data can be used for various types of map-based analytics services [29,30].…”
Section: Spatial Task Management Processmentioning
confidence: 99%