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Revealing encrypted WebRTC traffic via machine learning tools

机译:通过机器学习工具显示加密的WebRTC流量

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The detection of encrypted real-time traffic, both streaming and conversational, is an increasingly important issue for agencies in charge of lawful interception. Aside from well established technologies used in real-time communication (e.g. Skype, Facetime, Lync etc.) a new one is recently spreading: Web Real-Time Communication (WebRTC), which, with the support of a robust encryption method such as DTLS, offers capabilities for encrypted voice and video without the need of installing a specific application but using a common browser, like Chrome, Firefox or Opera. Encrypted WebRTC traffic cannot be recognized through methods of semantic recognition since it does not exhibit a discernible sequence of information pieces and hence statistical recognition methods are called for. In this paper we propose and evaluate a decision theory based system allowing to recognize encrypted WebRTC traffic by means of an open-source machine learning environment: Weka. Besides, a reasoned comparison among some of the most credited algorithms (J48, Simple Cart, Naïve Bayes, Random Forests) in the field of decision systems has been carried out, indicating the prevalence of Random Forests.
机译:对于负责合法侦听的代理机构而言,流和对话加密实时流量的检测已成为越来越重要的问题。除了在实时通信中使用的成熟技术(例如Skype,Facetime,Lync等)之外,最近还正在传播一种新技术:Web实时通信(WebRTC),该技术在强大的加密方法(例如DTLS)的支持下,可提供加密的语音和视频功能,而无需安装特定的应用程序,而是使用通用的浏览器(例如Chrome,Firefox或Opera)。加密的WebRTC通信无法通过语义识别的方法进行识别,因为它无法显示可辨别的信息片段序列,因此需要使用统计识别方法。在本文中,我们提出并评估了一种基于决策理论的系统,该系统允许通过开源机器学习环境Weka来识别加密的WebRTC流量。此外,在决策系统领域对一些最受好评的算法(J48,Simple Cart,朴素贝叶斯,随机森林)进行了合理的比较,表明随机森林的盛行。

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