隐私启用众包发射机定位使用调整的测量

Harsimran Singh, Shamik Sarkar, Anuj Dimri, Aditya Bhaskara, Neal Patwari, S. Kasera, Samuel Ramirez, K. Derr
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引用次数: 6

摘要

我们在对频谱违规者进行众包定位的背景下解决了位置隐私问题,其中参与的接收器向中央控制器报告接收到的信号强度(RSS)测量值及其位置。我们提出了一种新的方法,我们称之为调整测量方法,在这种方法中,我们为参与的接收器生成伪位置,并报告这些伪位置以及调整的RSS测量,就好像测量是在伪位置进行的一样。通过将RSS值表示为接收器RSS值的加权线性组合来调整RSS值,其中靠近错误位置的接收器比远离的接收器具有更高的权重。我们使用两个RSS数据集来评估我们的方法,一个来自杂乱的办公室(室内),另一个来自亚利桑那州凤凰城的道路(室外)。我们比较了我们的方法的定位误差与简单地向位置添加噪声的朴素方法的定位误差。我们的研究结果表明,在不显著增加定位误差的情况下,可以保留位置隐私。我们还制定了一个对手攻击,试图解决从接收器的错误位置确定接收器的真实位置的逆问题。我们的评估表明,对手对监控区域的真实位置的随机猜测并不好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Enabled Crowdsourced Transmitter Localization Using Adjusted Measurements
We address the problem of location privacy in the context of crowdsourced localization of spectrum offenders where participating receivers report received signal strength (RSS) measurements and their location to a central controller. We present a novel approach, that we call the adjusted measurement approach, in which we generate pseudo-locations for participating receivers and report these pseudo-locations along with adjusted RSS measurements as if the measurements were made at the pseudo-locations. The RSS values are adjusted by representing those as a weighted linear combination of the RSS values at the receivers, where receivers closer to the false location have a higher weight than those far away. We use two RSS datasets, one from a cluttered office (indoor) and another from roadways in Phoenix, Arizona (outdoor) to evaluate our approach. We compare the localization error of our approach with that of the naive approach that simply adds noise to locations. Our results demonstrate that location privacy can be preserved without a significant increase in the localization error. We also formulate an adversary attack that attempts to solve the inverse problem of determining the true locations of the receivers from their false locations. Our evaluations show that the adversary does no better than random guessing of true locations in the monitored area.
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