自适应指纹识别:网站指纹识别在少数加密流量

Chenggang Wang, Jimmy Dani, Xiang Li, Xiaodong Jia, Boyang Wang
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引用次数: 18

摘要

网站指纹攻击可以通过加密的网络流量推断出用户访问的网站。最近的研究可以通过利用深度神经网络实现高精度(例如98%)。然而,目前的攻击依赖于大量加密的流量数据,这些数据的收集非常耗时。此外,还需要频繁地收集大规模加密流量数据,以适应网站内容的变化。换句话说,进行网站指纹识别的启动时间是不实际的。在本文中,我们提出了一种新的方法,称为自适应指纹识别,该方法可以利用对抗域自适应在少量加密流量上获得较高的攻击精度。使用我们的方法,攻击者只需要收集少量的流量,而不是大规模的数据集,这使得网站指纹识别在现实世界中更加实用。我们在多个数据集上的广泛实验结果表明,我们的方法在封闭世界设置中可以在少量加密流量中达到89%的准确率,在开放世界设置中可以达到99%的精度和99%的召回率。与最近的一项研究(名为三重指纹)相比,我们的方法在预训练时间上效率更高,并且更具可扩展性。此外,该方法的攻击性能在封闭世界和开放世界评估中都优于三元指纹。
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Adaptive Fingerprinting: Website Fingerprinting over Few Encrypted Traffic
Website fingerprinting attacks can infer which website a user visits over encrypted network traffic. Recent studies can achieve high accuracy (e.g., 98%) by leveraging deep neural networks. However, current attacks rely on enormous encrypted traffic data, which are time-consuming to collect. Moreover, large-scale encrypted traffic data also need to be recollected frequently to adjust the changes in the website content. In other words, the bootstrap time for carrying out website fingerprinting is not practical. In this paper, we propose a new method, named Adaptive Fingerprinting, which can derive high attack accuracy over few encrypted traffic by leveraging adversarial domain adaption. With our method, an attacker only needs to collect few traffic rather than large-scale datasets, which makes website fingerprinting more practical in the real world. Our extensive experimental results over multiple datasets show that our method can achieve 89% accuracy over few encrypted traffic in the closed-world setting and 99% precision and 99% recall in the open-world setting. Compared to a recent study (named Triplet Fingerprinting), our method is much more efficient in pre-training time and is more scalable. Moreover, the attack performance of our method can outperform Triplet Fingerprinting in both the closed-world evaluation and open-world evaluation.
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