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One-Time, Oblivious, and Unlinkable Query Processing Over Encrypted Data on Cloud

机译:在云上的加密数据中的一次性,忽略和可解释的查询处理

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Location-based services (LBSs) are widely deployed in commercial services. These services always depend on a service provider, e.g., a cloud server, to store the enormous amounts of geospatial data and to process various queries. For example, a Yelp user can retrieve a list of recommended cafes by submitting her/his current location to the service provider. While LBSs offer tremendous benefits, it is vital to safeguard users' privacy against untrusted service providers. However, no prior secure k nearest neighbor query processing schemes satisfy the three security requirements of one-time, oblivious, and unlinkable. In particular, we are concerned with the problem of item exclusion: how to match one data query with each item on the cloud no more than once in an oblivious and unlinkable manner. In this paper, we propose the first secure k nearest neighbor query processing scheme, Obaq, that satisfies the above requirements. Obaq first introduces an item identifier into an existing secure k nearest neighbor query processing scheme. Each data owner inserts an item identifier and her/his location information into a secure index, and each data user transfers the identifier of a previously received data item and location information into a specific range. Then, Obaq excludes corresponding items via privacy-preserving range querying. We define strong index privacy and strong token privacy and formally prove the security of Obaq in the random oracle model. We further evaluate the performance of Obaq using a prototype and a real-world dataset. The experimental results show that Obaq is highly efficient and practical in terms of computational cost, communication overhead, and response defay.
机译:基于位置的服务(LBSS)广泛部署在商业服务中。这些服务始终依赖于服务提供商,例如云服务器,以存储大量地理空间数据和处理各种查询。例如,Yelp用户可以通过向服务提供商提交她/他的当前位置来检索推荐的咖啡馆列表。虽然LBSS提供了巨大的福利,但为不受信任的服务提供商维护用户隐私至关重要。然而,没有先前的安全k最近邻查询处理方案满足一次性,忽略和可解释的三次安全要求。特别是,我们涉及物品排除的问题:如何以云上的每个项目匹配一个数据查询,不仅以令人沮丧和可解释的方式匹配。在本文中,我们提出了第一个安全k最近邻查询处理方案,obaq,满足上述要求。 OBAQ首先将一个项目标识符引入现有的安全k最近邻查询处理方案。每个数据所有者将物品标识符和地点信息插入到安全索引中,并且每个数据用户将先前接收的数据项的标识符和位置信息传送到特定范围。然后,OBAQ通过隐私保留范围查询排除了相应的项目。我们定义了强大的指数隐私和强大的令牌隐私,并正式证明了Obaq在随机Oracle模型中的安全性。我们进一步使用原型和现实世界数据集评估OBAQ的性能。实验结果表明,在计算成本,通信开销和响应撤销方面,OBAQ高效实用。

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