Secure Computing of GPS Trajectory Similarity: A Review

Akshay Chandra Pesara, Vikram Patil, P. Atrey
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引用次数: 6

Abstract

Location Based Services (LBS) powered apps generate a massive amount of GPS trajectory data everyday. Because many of these trajectories are similar, if not exactly the same, (e.g., people traveling together or taking the same route everyday), there is a significant amount of redundancy in the data generated. This redundant data increases storage cost and network bandwidth cost. In order to counteract this and efficiently provide the LBS, LBS providers are considering trajectory similarity computation. There are several methods reported in the literature regarding similarity in GPS trajectories, which directly work on data in the plaintext format. However, computing trajectory similarity traditionally introduces privacy and security concerns among users since the number of incidents of the privacy breaches is on the rise. Hence, researchers have recently come up with innovative ways to perform trajectory similarity operations in the encrypted domain, without revealing the actual data. These approaches increase privacy and boost user confidence, which results in more customers for LBS providers. In this paper, we review various methods proposed in the plaintext domain and in the encrypted domain for secured trajectory comparison. We also discuss potential methods for encrypted domain computing that can be used in the domain of trajectory similarity and list the open research challenges.
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GPS轨迹相似度安全计算研究进展
基于位置服务(LBS)的应用程序每天都会生成大量的GPS轨迹数据。因为这些轨迹中的许多是相似的,如果不是完全相同的,(例如,人们一起旅行或每天走相同的路线),在生成的数据中有大量的冗余。这些冗余数据增加了存储成本和网络带宽成本。为了解决这一问题并有效地提供LBS, LBS提供商正在考虑轨迹相似性计算。文献中报道了几种关于GPS轨迹相似性的方法,它们直接处理明文格式的数据。然而,计算轨迹相似度通常会引起用户的隐私和安全担忧,因为隐私泄露事件的数量正在上升。因此,研究人员最近提出了在不泄露实际数据的情况下在加密域执行轨迹相似操作的创新方法。这些方法增加了隐私,增强了用户的信心,从而为LBS提供商带来了更多的客户。在本文中,我们回顾了在明文域和加密域提出的各种安全轨迹比较方法。我们还讨论了可用于轨迹相似性领域的加密域计算的潜在方法,并列出了开放的研究挑战。
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