Unmasking the Internet: A Survey of Fine-Grained Network Traffic Analysis

互联网 互联网流量 计算机科学 互联网隐私 万维网
作者
Yebo Feng,Jun Li,Jelena Mirković,Cong Wu,Chong Wang,Hao Ren,Jiahua Xu,Yang Liu
出处
期刊:IEEE Communications Surveys and Tutorials [Institute of Electrical and Electronics Engineers]
卷期号:27 (6): 3672-3709 被引量:12
标识
DOI:10.1109/comst.2025.3545541
摘要

Fine-grained traffic analysis (FGTA), as an advanced form of traffic analysis (TA), aims to analyze network traffic to deduce fine-grained information on or above the application layer, such as application-layer activities, fine-grained user behavior, or message content, even in the presence of traffic encryption or traffic obfuscation. Different from traditional TA, FGTA approaches are usually based on complicated processing pipelines or sophisticated data mining techniques such as deep learning or high-dimensional clustering, enabling them to discover subtle differences between different network traffic groups. Nowadays, with the increasingly complex Internet architecture, the increasingly frequent transmission of user data, and the widespread use of traffic encryption, FGTA is becoming an essential tool for both network administrators and attackers to gain different levels of visibility over the network. It plays a critical role in intrusion and anomaly detection, quality of experience investigation, user activity inference, website fingerprinting, location estimation, etc. To help scholars and developers research and advance this technology, in this survey paper, we examine the literature that deals with FGTA, investigating the frontier developments in this domain. By comprehensively surveying different approaches toward FGTA, we introduce their input traffic data, elaborate on their operating principles by different use cases, indicate their limitations and countermeasures, and raise several promising future research avenues.
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