Privacy-Preserving Query Scheme (PPQS) for Location-Based Services in Outsourced Cloud

Guangcan Yang, Yunhua He, Ke Xiao, Qifeng Tang, Yang Xin, Hongliang Zhu
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引用次数: 3

Abstract

Pervasive smartphones boost the prosperity of location-based service (LBS) and the increasing data prompt LBS providers to outsource their LBS datasets to the cloud side. The privacy issues of LBS in the outsourced cloud scenario have attracted considerable interest recently. However, current schemes cannot provide sufficient privacy preservation against practical challenges and are little concerned about the data retrieval efficiency of the cloud side. Therefore, we present an efficient Privacy-Preserving LBS Query Scheme (i.e., PPQS ). In our scheme, two cloud entities are employed to store the sensitive information of the outsourced data and provide the query service, which enhances the ability of privacy preservation for sensitive information. Besides, by using the techniques of homomorphic encryption and searchable symmetric encryption, the proposed scheme supports both the type query and the range query, which can significantly improve the data retrieval efficiency of the cloud side and reduce the computation burden on the cloud side and the user side. Through detailed analysis on security and computation cost, we show the enhanced ability of privacy preservation and the lower computation cost compared to previous schemes. Based on a real dataset, extensive simulations are performed to validate the effectiveness and performance of our scheme.
外包云中基于位置服务的隐私保护查询方案(PPQS
无处不在的智能手机推动了基于位置的服务(LBS)的繁荣,不断增长的数据促使LBS提供商将其LBS数据集外包给云端。最近,外包云场景中LBS的隐私问题引起了相当大的兴趣。然而,目前的方案不能提供足够的隐私保护以应对实际挑战,并且很少关注云端的数据检索效率。因此,我们提出了一种有效的隐私保护LBS查询方案(即PPQS)。在我们的方案中,采用两个云实体来存储外包数据的敏感信息并提供查询服务,增强了敏感信息的隐私保护能力。此外,该方案采用同态加密和可搜索对称加密技术,支持类型查询和范围查询,显著提高了云端的数据检索效率,减少了云端和用户端的计算负担。通过对安全性和计算成本的详细分析,我们证明了与以前的方案相比,隐私保护能力增强,计算成本更低。基于一个真实数据集,进行了大量的仿真,以验证我们的方案的有效性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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