匿名网络中的流量分析攻击

K. Kohls, C. Pöpper
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引用次数: 0

摘要

每天有超过170万的用户,Tor是一个大型匿名网络,帮助人们在互联网上保护自己的身份。Tor提供低延迟传输,可以为包括网页浏览在内的广泛应用程序提供服务,这使得它成为大型用户群的轻松访问工具。不幸的是,它的广泛采用使Tor成为去匿名化攻击的重要目标。最近的研究证明,存在强大的流量分析攻击,使攻击者能够关联网络中的流量流并识别用户和被访问的内容。因此,匿名网络领域的一个开放研究问题解决了对流量分析类攻击的有效对策。防御技术必须改进现有网络的安全特性,同时仍然提供可接受的性能,以保持系统的广泛接受。本文提出了一种混合策略的分析,作为对Tor中流量分析攻击的对策。首先,仿真结果表明了三种主要混合策略的安全性和性能损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Analysis Attacks in Anonymity Networks
With more than 1.7 million daily users, Tor is a large-scale anonymity network that helps people to protect their identities in the Internet. Tor provides low-latency transmissions that can serve a wide range of applications including web browsing, which renders it an easily accessible tool for a large user base. Unfortunately, its wide adoption makes Tor a valuable target for de-anonymization attacks. Recent work proved that powerful traffic analysis attacks exist which enable an adversary to relate traffic streams in the network and identify users and accessed contents. One open research question in the field of anonymity networks therefore addresses efficient countermeasures to the class of traffic analysis attacks. Defensive techniques must improve the security features of existing networks while still providing an acceptable performance that can maintain the wide acceptance of a system. The proposed work presents an analysis of mixing strategies as a countermeasure to traffic analysis attacks in Tor. First simulation results indicate the security gains and performance impairments of three main mixing strategies.
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