Inferring ADU Combinations from Encrypted QUIC Stream

Hua Wu, Guang Cheng, Xiaoyan Hu
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引用次数: 5

Abstract

Video traffic has experienced rapid growth in the past and will continue to grow rapidly. It is an essential issue to monitor video streaming for both network management and network security. With the popularity of encrypted video, most of the analysis methods are based on the extraction of application data units (ADUs) from an encrypted stream. However, that QUIC streaming use multiplexing makes it impossible to extract ADU from encrypted QUIC streaming. In an effort to overcome this challenge, we proposed a method to extract application data unit combination (ADUC) from encrypted QUIC streaming instead. Taking YouTube video streaming as an example, several stream features are defined. These features are used to develop machine learning models for classifying the ADUC types in the encrypted YouTube QUIC video streaming. The feasibility and accuracy of the method are validated by the actual encrypted YouTube QUIC video streams. Our proposed method represents an initial step towards the analysis of encrypted QUIC streaming.
从加密QUIC流推断ADU组合
视频流量在过去经历了快速增长,并将继续快速增长。视频流监控是网络管理和网络安全的核心问题。随着加密视频的普及,大多数分析方法都是基于从加密流中提取应用数据单元(adu)。然而,QUIC流使用多路复用使得不可能从加密的QUIC流中提取ADU。为了克服这一挑战,我们提出了一种从加密QUIC流中提取应用数据单元组合(ADUC)的方法。以YouTube视频流为例,定义了几个流特性。这些特征用于开发机器学习模型,用于对加密YouTube QUIC视频流中的ADUC类型进行分类。通过实际加密的YouTube QUIC视频流验证了该方法的可行性和准确性。我们提出的方法代表了加密QUIC流分析的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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