A passive means based privacy protection method for the perceptual layer of IoTs

Xiaoyu Li, O. Yoshie, Daoping Huang
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Abstract

Privacy protection in Internet of Things (IoTs) has long been the topic of extensive research in the last decade. The perceptual layer of IoTs suffers the most significant privacy disclosing because of the limitation of hardware resources. Data encryption and anonymization are the most common methods to protect private information for the perceptual layer of IoTs. However, these efforts are ineffective to avoid privacy disclosure if the communication environment exists unknown wireless nodes which could be malicious devices. Therefore, in this paper we derive an innovative and passive method called Horizontal Hierarchy Slicing (HHS) method to detect the existence of unknown wireless devices which could result negative means to the privacy. PAM algorithm is used to cluster the HHS curves and analyze whether unknown wireless devices exist in the communicating environment. Link Quality Indicator data are utilized as the network parameters in this paper. The simulation results show their effectiveness in privacy protection.
基于被动手段的物联网感知层隐私保护方法
在过去十年中,物联网中的隐私保护一直是广泛研究的主题。由于硬件资源的限制,物联网的感知层遭受的隐私泄露最为严重。数据加密和匿名化是物联网感知层保护私有信息最常用的方法。然而,如果通信环境中存在未知的无线节点,这些努力对于避免隐私泄露是无效的,这些节点可能是恶意设备。因此,在本文中,我们提出了一种创新的被动方法,称为水平层次切片(HHS)方法来检测未知无线设备的存在,这可能会对隐私造成负面影响。利用PAM算法对HHS曲线进行聚类,分析通信环境中是否存在未知无线设备。本文采用链路质量指标数据作为网络参数。仿真结果表明了该算法在隐私保护方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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