加密流量检测:超越端口号时代

Hossein Doroud, Ahmad Alaswad, F. Dressler
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引用次数: 0

摘要

互联网服务提供商(ISP)依靠网络流量分类器为其用户提供安全可靠的连接。加密流量带来了挑战,因为使用经典的深度数据包检测(DPI)技术攻击不再可行。区分加密流量和非加密流量是解决这一挑战的第一步。已经进行了几次尝试来识别加密的流量。在这项工作中,我们比较了DPI、流量模式和随机性测试的检测性能,以识别不同粒度级别的加密流量。在一项实验研究中,我们评估了这些候选分类器,并表明基于流量模式的分类器在加密检测方面优于其他分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Encrypted Traffic Detection: Beyond the Port Number Era
Internet service providers (ISP) rely on network traffic classifiers to provide secure and reliable connectivity for their users. Encrypted traffic introduces a challenge as attacks are no longer viable using classic Deep Packet Inspection (DPI) techniques. Distinguishing encrypted from non-encrypted traffic is the first step in addressing this challenge. Several attempts have been conducted to identify encrypted traffic. In this work, we compare the detection performance of DPI, traffic pattern, and randomness tests to identify encrypted traffic in different levels of granularity. In an experimental study, we evaluate these candidates and show that a traffic pattern-based classifier outperforms others for encryption detection.
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