SpyCon:人在环物联网中基于适应的间谍软件

Salma Elmalaki, Bo-Jhang Ho, M. Alzantot, Yasser Shoukry, M. Srivastava
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引用次数: 9

摘要

个性化物联网根据上下文信息(如用户行为和位置)调整其行为。不幸的是,个性化物联网适应用户环境的事实打开了一个泄漏用户私人信息的侧通道。为此,我们首先研究恶意窃听者可以在多大程度上监控物联网系统所采取的行动并提取用户的私人信息。特别是,我们展示了两个具体的实例(在移动电话和智能家居的背景下)一类新的间谍软件,我们称之为基于上下文感知适应的间谍软件(SpyCon)。实验评估表明,开发的SpyCon可以预测用户的日常行为,准确率为90.3%。由于SpyCon是一种新的间谍软件,没有已知的先前签名或行为,传统的基于代码签名或系统行为的间谍软件检测不足以检测SpyCon。我们讨论了可能阻碍SpyCon效果的检测和缓解机制。
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SpyCon: Adaptation Based Spyware in Human-in-the-Loop IoT
Personalized IoT adapt their behavior based on contextual information, such as user behavior and location. Unfortunately, the fact that personalized IoT adapt to user context opens a side-channel that leaks private information about the user. To that end, we start by studying the extent to which a malicious eavesdropper can monitor the actions taken by an IoT system and extract user's private information. In particular, we show two concrete instantiations (in the context of mobile phones and smart homes) of a new category of spyware which we refer to as Context-Aware Adaptation Based Spyware (SpyCon). Experimental evaluations show that the developed SpyCon can predict users' daily behavior with an accuracy of 90.3%. Being a new spyware with no known prior signature or behavior, traditional spyware detection that is based on code signature or system behavior are not adequate to detect SpyCon. We discuss possible detection and mitigation mechanisms that can hinder the effect of SpyCon.
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