IoTBeholder: A Privacy Snooping Attack on User Habitual Behaviors from Smart Home Wi-Fi Traffic

Qingsong Zou, Peng Cheng, LI Qing, Liao Ruoyu, Yucheng Huang, Jingyu Xiao, Yong Jiang, Qingsong Zou, Qing Li, Ruoyu Li, Yu-Chung Huang, Gareth Tyson, Jingyu Xiao
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引用次数: 2

Abstract

With the deployment of a growing number of smart home IoT devices, privacy leakage has become a growing concern. Prior work on privacy-invasive device localization, classification, and activity identification have proven the existence of various privacy leakage risks in smart home environments. However, they only demonstrate limited threats in real world due to many impractical assumptions, such as having privileged access to the user’s home network. In this paper, we identify a new end-to-end attack surface using IoTBeholder, a system that performs device localization, classification, and user activity identification. IoTBeholder can be easily run and replicated on commercial off-the-shelf (COTS) devices such as mobile phones or personal computers, enabling attackers to infer user’s habitual behaviors from smart home Wi-Fi traffic alone. We set up a testbed with 23 IoT devices for evaluation in the real world. The result shows that IoTBeholder has good device classification and device activity identification performance. In addition, IoTBeholder can infer the users’ habitual behaviors and automation rules with high accuracy and interpretability. It can even accurately predict the users’ future actions, highlighting a significant threat to user privacy that IoT vendors and users should highly concern.
IoTBeholder:智能家居Wi-Fi流量对用户习惯行为的隐私窥探攻击
随着越来越多的智能家居物联网设备的部署,隐私泄露已经成为人们越来越关注的问题。先前在侵犯隐私设备定位、分类和活动识别方面的工作已经证明了智能家居环境中存在各种隐私泄露风险。然而,由于许多不切实际的假设,例如拥有对用户家庭网络的特权访问,它们在现实世界中只展示了有限的威胁。在本文中,我们使用IoTBeholder识别一个新的端到端攻击面,IoTBeholder是一个执行设备定位、分类和用户活动识别的系统。IoTBeholder可以很容易地在商用现货(COTS)设备(如手机或个人电脑)上运行和复制,使攻击者能够仅从智能家居Wi-Fi流量推断用户的习惯行为。我们建立了一个有23个物联网设备的测试平台,用于在现实世界中进行评估。结果表明,IoTBeholder具有良好的设备分类和设备活动识别性能。此外,IoTBeholder可以推断用户的习惯行为和自动化规则,具有较高的准确性和可解释性。它甚至可以准确预测用户未来的行为,突出了物联网供应商和用户应该高度关注的对用户隐私的重大威胁。
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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