基于自编码器的wifi位置数据擦除重构方法研究

Tetsushi Ohki, Akira Otsuka
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引用次数: 1

摘要

匿名化是保护基于位置的服务(LBS)免受隐私泄露的主要过程之一。然而,对于LBS的去匿名化攻击,以及匿名化处理是否足以作为隐私泄露的对策,有很多讨论。本文提出了一种基于马尔可夫过渡场(MTF)和去噪自动编码器(DAE)的时间序列重构用户位置的新方法。我们还关注Wi-Fi位置数据,包括许多擦除错误。我们使用我们的重建方法对东京四个区由10000台设备/四周组成的Wi-Fi位置数据集进行了去匿名化攻击评估。我们确认,当候选设备数量为100时,成功攻击率(SAR)为24%,当候选设备数量为10000时,成功攻击率为6%。
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A Study on Autoencoder-based Reconstruction Method for Wi-Fi Location Data with Erasures
Anonymization is one of the major processes to protect location-based services (LBS) from privacy leakage. However, there are many discussions about de-anonymization attacks to LBS and whether anonymization processing is a sufficient countermeasure for privacy leakage. In this paper, we proposed a novel method to reconstruct the location of user considering the time series using the Markov Transition Field (MTF) and Denoising Auto Encoder (DAE). We also focused on Wi-Fi location data including many erasures errors. We conducted an evaluation of de-anonymization attack using our reconstruction method to the Wi-Fi location dataset that was consisted of 10000 devices / four weeks in the four wards of Tokyo. We confirmed that the successful attack rate (SAR) was 24% when the number of candidate devices was 100 and 6\% when that was 10000 devices.
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Session details: Session 1: Privacy Proceedings of the 2017 on Multimedia Privacy and Security Session details: Session 4: Intrusion Detection and Prevention Session details: Session 3: Image and Video Security An NSF View of Multimedia Privacy and Security: Extended Abstract
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