Lightweight Privacy-Preserving Spatial Keyword Query over Encrypted Cloud Data

Yutao Yang, Yinbin Miao, K. Choo, R. Deng
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引用次数: 3

Abstract

With the rapid development of geographic location technology and the explosive growth of data, a large amount of spatio-textual data is outsourced to the cloud server to reduce the local high storage and computing burdens, but at the same time causes security issues such as data privacy leakage. Thus, extensive privacy-preserving spatial keyword query schemes have been proposed. Most of the existing schemes use Asymmetric Scalar-Product-Preserving Encryption (ASPE) for encryption, but ASPE has proven to be insecure. And the existing spatial range query schemes require users to provide more information about the query range and generate a large amount of ciphertext, which causes high storage and computational burdens. To solve these issues, in this paper we introduce some random numbers and a random permutation to enhance the security of ASPE scheme, and then propose a novel privacy-preserving Spatial Keyword Query (SKQ) scheme based on the enhanced ASPE and Geohash algorithm. In addition, we design a more Lightweight Spatial Keyword Query (LSKQ) scheme by using a unified index for spatial range and multiple keywords, which not only greatly decreases SKQ’s storage and computational costs but also requires users to provide little information about query region. Finally, formal security analysis proves that our schemes have Indistinguishability under Chosen Plaintext Attack (IND-CPA), and extensive experiments demonstrate that our enhanced scheme is efficient and practical.
加密云数据的轻量级保护隐私空间关键字查询
随着地理定位技术的快速发展和数据的爆炸式增长,大量的空间文本数据被外包给云服务器,以减轻本地高昂的存储和计算负担,但同时也带来了数据隐私泄露等安全问题。因此,提出了广泛的保护隐私的空间关键字查询方案。现有的加密方案大多采用非对称标量保积加密(ASPE)进行加密,但ASPE已被证明是不安全的。而现有的空间范围查询方案需要用户提供更多的查询范围信息,并产生大量的密文,存储和计算负担较大。为了解决这些问题,本文引入了一些随机数和随机排列来提高ASPE方案的安全性,并在此基础上提出了一种新的基于增强ASPE和Geohash算法的隐私保护空间关键字查询(SKQ)方案。此外,我们设计了一种更轻量级的空间关键字查询(LSKQ)方案,通过对空间范围和多个关键字使用统一的索引,不仅大大降低了空间关键字查询的存储和计算成本,而且用户只需提供很少的查询区域信息。最后,正式的安全分析证明了我们的方案在选择明文攻击(IND-CPA)下具有不可区分性,大量的实验证明了我们的改进方案是有效和实用的。
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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