Privacy-Preserving Spatial Crowdsourcing Based on Anonymous Credentials

X. Yi, Fang-Yu Rao, Gabriel Ghinita, E. Bertino
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引用次数: 7

Abstract

In Spatial Crowdsourcing (SC), a set of spatio-temporal tasks are outsourced to a set of workers, i.e., individuals with mobile devices who physically travel to task locations. The process of matching workers to tasks is performed by a SC server. To perform matching, the SC server needs access to worker locations. However, the SC server may not be trustworthy. Current solutions for protecting locations of workers assume that a trusted cellular service provider (CSP) knows the identities and locations of workers and sanitizes locations before sharing them with the SC server. In practice, the CSP may not have the technical ability, nor the proper incentives to perform the sanitization task. Thus, location protection must be performed by a Location Privacy Provider (LPP). To prevent identity disclosure to the LPP, we propose a novel solution based on anonymous credentials which preserves worker privacy. Our solution allows registered workers to log on to the LPP and receive tasks from the SC-server anonymously. In addition, our solution assures the confidentiality and integrity of spatial tasks. Our implementation and experiments demonstrate that our solution is practical.
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基于匿名凭证的隐私保护空间众包
在空间众包(SC)中,一组时空任务被外包给一组工人,即拥有移动设备的个人,他们亲自前往任务地点。将工作者与任务匹配的过程由SC服务器执行。要执行匹配,SC服务器需要访问工作人员位置。但是,SC服务器可能不值得信任。当前用于保护工作人员位置的解决方案假设受信任的蜂窝服务提供商(CSP)知道工作人员的身份和位置,并在与SC服务器共享位置之前对位置进行消毒。在实践中,CSP可能没有技术能力,也没有适当的动机来执行消毒任务。因此,位置保护必须由位置隐私提供程序(LPP)执行。为了防止身份泄露给LPP,我们提出了一种基于匿名凭证的新解决方案,该方案保护了工人的隐私。我们的解决方案允许注册工作者登录到LPP并匿名地从sc -服务器接收任务。此外,我们的解决方案确保了空间任务的保密性和完整性。实验结果表明,该方案是可行的。
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