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Query Integrity Assurance of Location-Based Services Accessing Outsourced Spatial Databases

机译:基于位置的服务访问外包空间数据库的查询完整性保证

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摘要

Outsourcing data to third party data providers is becoming a common practice for data owners to avoid the cost of managing and maintaining databases. Meanwhile, due to the popularity of location-based-services (LBS), the need for spatial data (e.g., gazetteers, vector data) is increasing exponentially. Consequently, we are witnessing a new trend of outsourcing spatial datasets by data collectors. Two main challenges with outsourcing datasets is to keep the data private (from the data provider) and ensure the integrity of the query result (for the clients). Unfortunately, most of the techniques proposed for privacy and integrity do not extend to spatial data in a straightforward manner. Hence, recent studies proposed various techniques to support either privacy or integrity (but not both) on spatial datasets. In this paper, for the first time, we propose a technique that can ensure both privacy and integrity for outsourced spatial data. In particular, we first use a one-way spatial transformation method based on Hilbert curves, which encrypts the spatial data before outsourcing and hence ensures its privacy. Next, by probabilistically replicating a portion of the data and encrypting it with a different encryption key, we devise a technique for the client to audit the trustworthiness of the query results. We show the applicability of our approach for both k-nearest-neighbor and spatial range queries, the building blocks of any LBS application. Finally, we evaluate the validity and performance of our algorithms with real-world datasets.
机译:将数据外包给第三方数据提供商已成为数据所有者避免管理和维护数据库的成本的一种普遍做法。同时,由于基于位置的服务(LBS)的普及,对空间数据(例如,地名词典,矢量数据)的需求呈指数增长。因此,我们看到了数据收集者外包空间数据集的新趋势。外包数据集的两个主要挑战是保持数据私密性(来自数据提供者)并确保查询结果的完整性(针对客户端)。不幸的是,为隐私和完整性提出的大多数技术并未以直接的方式扩展到空间数据。因此,最近的研究提出了各种技术来支持空间数据集的隐私或完整性(但不能同时支持两者)。在本文中,我们首次提出了一种可以确保外包空间数据的隐私和完整性的技术。特别是,我们首先使用基于希尔伯特曲线的单向空间变换方法,该方法在外包之前对空间数据进行加密,从而确保其隐私。接下来,通过概率性地复制一部分数据并用不同的加密密钥对其进行加密,我们设计了一种技术,供客户端审核查询结果的可信赖性。我们展示了我们的方法对于k最近邻查询和空间范围查询的适用性,这是任何LBS应用程序的基础。最后,我们通过实际数据集评估算法的有效性和性能。

著录项

  • 来源
  • 会议地点 Aalborg(DK);Aalborg(DK)
  • 作者单位

    Dept. of Computer Science and Software Engineering, Auburn University, USA;

    Computer Science Department, University of Southern California, USA;

    Computer Science Department, University of Southern California, USA;

    IBM Thomas J. Watson Research Center, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP311.73;
  • 关键词

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