在边缘快速识别物联网设备

O. Thompson, A. Mandalari, H. Haddadi
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引用次数: 3

摘要

从智能扬声器到安全摄像头,消费者物联网(IoT)设备在日常家庭中越来越普遍。它们带来好处的同时,也带来了潜在的隐私和安全威胁。为了限制这些威胁,我们必须实施在边缘过滤物联网流量的解决方案。为此,物联网设备的识别是第一步。在本文中,我们展示了一种快速物联网设备识别的新方法,该方法使用可从本地网络上的DNS服务器捕获的设备DNS流量训练的神经网络。该方法通过将模型拟合到DNS二级域流量在首次连接后的第一秒来识别设备。由于安全和隐私威胁检测通常在设备特定级别上运行,因此快速识别允许立即实施这些策略。通过总共51,000个严格的自动化实验,我们对来自27个不同制造商的30个消费物联网设备进行了分类,产品类型和设备制造商的准确率分别为82%和93%。
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Rapid IoT device identification at the edge
Consumer Internet of Things (IoT) devices are increasingly common in everyday homes, from smart speakers to security cameras. Along with their benefits come potential privacy and security threats. To limit these threats we must implement solutions to filter IoT traffic at the edge. To this end the identification of the IoT device is the first natural step. In this paper we demonstrate a novel method of rapid IoT device identification that uses neural networks trained on device DNS traffic that can be captured from a DNS server on the local network. The method identifies devices by fitting a model to the first seconds of DNS second-level-domain traffic following their first connection. Since security and privacy threat detection often operate at a device specific level, rapid identification allows these strategies to be implemented immediately. Through a total of 51,000 rigorous automated experiments, we classify 30 consumer IoT devices from 27 different manufacturers with 82% and 93% accuracy for product type and device manufacturers respectively.
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