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How to Discover IoT Devices When Network Traffic Is Encrypted

机译:加密网络流量后如何发现IoT设备

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Managing Internet of Things (IoT) devices should be easy. Yet, the increasing use of encrypted network traffic in IoT devices is complicating their management, for example during device audits or security scans. While desirable from a network security point of view, the use of encrypted traffic allows less visibility to IT environments looking to manage IoT devices. In this paper, we focus on the problem of identifying IoT device types by analyzing their encrypted traffic. We examine the TLS traffic of IoT devices and derive fingerprints from their session initialization message exchanges (i.e., ClientHello and ServerHello messages). We identify key features of the TLS handshake protocol that can serve as strong indicators for identifying IoT devices. We then build term frequency-inverse document frequency (TF-IDF) based models for identifying IoT devices based on their TLS fingerprints. In our experimental setup, we train on 71 IoT devices in 15 distinct categories over a range of three months; we derive TF-IDF classifiers for testing using two different feature sets. One feature set representing a greedy strategy contains ten prominent features extracted from the TLS handshake protocol. The other feature set contains the four features representing the most unique values in the training dataset. Experimental results show that the 4-feature set classifiers have similar classification performance as the 10- feature set, generating accuracy, precision and F1-score of over 90%.
机译:管理物联网(IoT)设备应该很容易。但是,例如在设备审核或安全扫描期间,物联网设备中加密网络流量的越来越多的使用使它们的管理变得复杂。从网络安全的角度来看,加密加密流量的使用虽然合乎需要,但对希望管理IoT设备的IT环境的可见性却较低。在本文中,我们专注于通过分析物联网设备的加密流量来识别其类型的问题。我们检查IoT设备的TLS流量,并从其会话初始化消息交换(即ClientHello和ServerHello消息)中获取指纹。我们确定TLS握手协议的关键功能,这些功能可以用作确定IoT设备的有力指标。然后,我们建立基于术语频率反文档频率(TF-IDF)的模型,用于基于TLS指纹识别IoT设备。在我们的实验设置中,我们在三个月的时间内对15个不同类别的71种IoT设备进行了培训;我们使用两个不同的功能集导出用于测试的TF-IDF分类器。一个代表贪婪策略的功能集包含从TLS握手协议中提取的十个突出功能。另一个功能集包含代表训练数据集中最独特值的四个功能。实验结果表明,四特征集分类器具有与十特征集相似的分类性能,生成的准确性,准确性和F1得分超过90%。

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