Analyzing the Feasibility and Generalizability of Fingerprinting Internet of Things Devices

Dilawer Ahmed, Anupam Das, Fareed Zaffar
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引用次数: 3

Abstract

Abstract In recent years, we have seen rapid growth in the use and adoption of Internet of Things (IoT) devices. However, some loT devices are sensitive in nature, and simply knowing what devices a user owns can have security and privacy implications. Researchers have, therefore, looked at fingerprinting loT devices and their activities from encrypted network traffic. In this paper, we analyze the feasibility of fingerprinting IoT devices and evaluate the robustness of such fingerprinting approach across multiple independent datasets — collected under different settings. We show that not only is it possible to effectively fingerprint 188 loT devices (with over 97% accuracy), but also to do so even with multiple instances of the same make-and-model device. We also analyze the extent to which temporal, spatial and data-collection-methodology differences impact fingerprinting accuracy. Our analysis sheds light on features that are more robust against varying conditions. Lastly, we comprehensively analyze the performance of our approach under an open-world setting and propose ways in which an adversary can enhance their odds of inferring additional information about unseen devices (e.g., similar devices manufactured by the same company).
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指纹物联网设备的可行性及推广分析
近年来,我们看到物联网(IoT)设备的使用和采用快速增长。然而,一些loT设备本质上是敏感的,仅仅知道用户拥有什么设备就可能涉及安全和隐私问题。因此,研究人员从加密的网络流量中研究了指纹loT设备及其活动。在本文中,我们分析了指纹物联网设备的可行性,并评估了这种指纹方法在不同设置下收集的多个独立数据集上的鲁棒性。我们证明,不仅可以有效地识别188个loT设备(准确率超过97%),而且即使是同一品牌和型号的设备的多个实例也可以这样做。我们还分析了时间、空间和数据收集方法差异对指纹识别准确性的影响程度。我们的分析揭示了在不同条件下更健壮的特征。最后,我们全面分析了我们的方法在开放世界环境下的性能,并提出了一些方法,这些方法可以提高对手推断未见设备(例如,由同一公司制造的类似设备)的额外信息的几率。
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