Efficient and generalized geometric range search on encrypted spatial data in the cloud

Yuchuan Luo, Shaojing Fu, Dongsheng Wang, Ming Xu, X. Jia
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引用次数: 16

Abstract

With cloud services, users can easily host their data in the cloud and retrieve the part needed by search. Searchable encryption is proposed to conduct such process in a privacy-preserving way, which allows a cloud server to perform search over the encrypted data in the cloud according to the search token submitted by the user. However, existing works mainly focus on textual data and merely take numerical spatial data into account. Especially, geometric range search is an important queries on spatial data and has wide applications in machine learning, location-based services(LBS), computer-aided design(CAD), and computational geometry. In this paper, we proposed an efficient and generalized symmetric-key geometric range search scheme on encrypted spatial data in the cloud, which supports queries with different range shapes and dimensions. To provide secure and efficient search, we extend the secure kNN computation with dynamic geometric transformation, which dynamically transforms the points in the dataset and the queried geometric range simultaneously. Besides, we further extend the proposed scheme to support sub-linear search efficiency through novel usage of tree structures. We also present extensive experiments to evaluate the proposed schemes on a real-world dataset. The results show that the proposed schemes are efficient over encrypted datasets and secure against the curious cloud servers.
云中加密空间数据的高效广义几何距离搜索
有了云服务,用户可以很容易地将他们的数据托管在云中,并检索搜索所需的部分。提出了可搜索加密,以保护隐私的方式进行这一过程,允许云服务器根据用户提交的搜索令牌对云中的加密数据进行搜索。然而,现有的研究主要集中在文本数据上,仅对数值空间数据进行了考虑。特别是几何距离搜索是一种重要的空间数据查询,在机器学习、基于位置的服务(LBS)、计算机辅助设计(CAD)和计算几何等领域有着广泛的应用。本文提出了一种高效、通用的对称键几何范围搜索方案,该方案支持不同范围形状和维度的查询。为了提供安全高效的搜索,我们将安全kNN计算扩展为动态几何变换,同时对数据集中的点和查询的几何范围进行动态变换。此外,我们进一步扩展了该方案,通过新颖的树形结构来支持亚线性搜索效率。我们还提出了大量的实验来评估在现实世界数据集上提出的方案。结果表明,所提出的方案在加密数据集上是有效的,并且对奇怪的云服务器是安全的。
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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