高效,有效和现实的网站指纹缓解

Weiqi Cui, Jiangmin Yu, Yanmin Gong, Eric Chan-Tin
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引用次数: 2

摘要

网站指纹攻击已经被证明能够预测访问的网站,即使网络连接是加密和匿名的。这些攻击的准确率高达92%。缓解这些攻击的方法是使用掩护/诱饵网络流量来增加噪音,填充以确保所有网络数据包的大小相同,并引入网络延迟以迷惑对手。尽管这些缓解措施已被证明是有效的,将准确率降低到10%,但开销很高。延迟开销大于100%,带宽开销至少为30%。我们引入了一种新的真实覆盖流量算法,基于用户以前的网络流量,以减轻网站指纹攻击。在模拟中,我们的算法在零延迟开销和约20%带宽开销的情况下,将攻击的准确率降低到14%。在现实世界的实验中,我们的算法将攻击的准确率降低到16%,而带宽开销仅为20%。2019年2月30日收到;2019年4月20日接受;发布于2019年4月29日
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Efficient, Effective, and Realistic Website Fingerprinting Mitigation
Website fingerprinting attacks have been shown to be able to predict the website visited even if the network connection is encrypted and anonymized. These attacks have achieved accuracies as high as 92%. Mitigations to these attacks are using cover/decoy network traffic to add noise, padding to ensure all the network packets are the same size, and introducing network delays to confuse an adversary. Although these mitigations have been shown to be effective, reducing the accuracy to 10%, the overhead is high. The latency overhead is above 100% and the bandwidth overhead is at least 30%. We introduce a new realistic cover traffic algorithm, based on a user’s previous network traffic, to mitigate website fingerprinting attacks. In simulations, our algorithm reduces the accuracy of attacks to 14% with zero latency overhead and about 20% bandwidth overhead. In real-world experiments, our algorithms reduces the accuracy of attacks to 16% with only 20% bandwidth overhead. Received on 30 February 2019; accepted on 20 April 2019; published on 29 April 2019
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