iRide: A Privacy-Preserving Architecture for Self-Driving Cabs Service

Ala'a Al-Momani, F. Kargl, R. Schmidt, Christoph Bösch
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引用次数: 3

Abstract

Despite the popularity Ride Hailing Services (RHSs) have gained recently, they pose significant privacy risks. In particular, a user wishing to benefit from a RHS is required to disclose her precise spatio-temporal data to the RHS provider. The provider is, thus, able to infer and harvest further sensitive information about the user, including, e.g., her social behavior. Previous work on protecting privacy in such a context assumes service provider to not collude with drivers. This assumption does not hold in the scenario of self-driving cabs, as driverless vehicles replace drivers and, thus, the service provider has to control and collude with her fleet. In this paper, we tackle the open issue of service provider colluding with her fleet by analyzing the scenario of self-driving cab services. We present iRide, a privacy-preserving architecture for self-driving cab service that relies on Intel SGX to provide strong privacy guarantees. iRide maintains the convenience of the functionality while offering strong privacy guarantees, that is, we do not introduce or rely on trade-offs between functionality and privacy. The introduced overhead in iRide design is relatively small and rather acceptable under practical aspects. To our best knowledge, this is the first work that tackles privacy protection in self-driving cab services.
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iRide:自动驾驶出租车服务的隐私保护架构
尽管网约车服务(rss)最近越来越受欢迎,但它们也带来了重大的隐私风险。特别是,希望从RHS中受益的用户需要向RHS提供者披露其精确的时空数据。因此,提供者能够推断和获取关于用户的进一步敏感信息,包括,例如,她的社会行为。以前在这种情况下保护隐私的工作假设服务提供商不会与司机勾结。这种假设在自动驾驶出租车的情况下就不成立了,因为无人驾驶汽车取代了司机,因此,服务提供商必须控制和勾结她的车队。在本文中,我们通过分析自动驾驶出租车服务的场景来解决服务提供商与其车队勾结的公开问题。我们介绍了iRide,这是一种用于自动驾驶出租车服务的隐私保护架构,它依赖于英特尔SGX提供强大的隐私保障。iRide保持了功能的便利性,同时提供了强有力的隐私保证,即我们不引入或依赖于功能与隐私之间的权衡。iRide设计中引入的开销相对较小,在实际应用中是可以接受的。据我们所知,这是第一个解决自动驾驶出租车服务隐私保护问题的工作。
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