可接受误差范围:量化BLE定位中的位置隐私

Viktoriia Shubina, A. Ometov, D. Niculescu, E. Lohan
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引用次数: 0

摘要

随着移动设备的使用和基于位置的服务变得越来越广泛,位置隐私提出了一个严峻的挑战。距离检测数据可以揭示个人的敏感信息,因此保存他们的位置数据至关重要。实现隐私保护的一种方法是在真实数据中添加噪声,这可能会带来不确定性,同时仍然允许适度的邻近检测服务和基于接收信号强度(RSS)的定位。然而,为了平衡隐私和准确性问题,仔细调整添加的噪音量是很重要的。本文扩展了我们之前基于测量误差和有意添加噪声来评估位置隐私边界的工作。我们的模型建立在差分隐私的现有工作基础上,并引入了其他技术来估计特定于邻近数据的隐私界限。通过使用真实世界的测量数据,我们测量了隐私与准确性之间的权衡,并提出了可以添加额外噪声的情况。我们的框架可以用来通知隐私保护的基于位置的应用程序,并指导选择适当的噪声水平,以实现所需的隐私-准确性平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acceptable Margin of Error: Quantifying Location Privacy in BLE Localization
Location privacy poses a critical challenge as the use of mobile devices and location-based services becomes more and more widespread. Proximity-detection data can reveal sensitive information about individuals, making it essential to preserve their location data. One way to achieve privacy protection is by adding noise to ground-truth data, which can introduce uncertainty while still allowing moderate utility for proximity-detection services and Received Signal Strength (RSS)-based localization. However, it is important to carefully adjust the amount of noise added in order to balance the privacy and accuracy concerns. This paper expands our previous work on evaluating location privacy bounds based on measurement error and intentionally added noise. Our model builds upon existing work in differential privacy and introduces other techniques to estimate privacy bounds specific to proximity data. By using real-world measurement data, we measure the privacy-accuracy trade-off and suggest cases where additional noise could be added. Our framework can be utilized to inform privacy-preserving location-based applications and guide the selection of appropriate noise levels in order to achieve the desired privacy-accuracy balance.
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