TY - GEN
T1 - Subverting Website Fingerprinting Defenses with Robust Traffic Representation
AU - Shen, Meng
AU - Ji, Kexin
AU - Gao, Zhenbo
AU - Li, Qi
AU - Zhu, Liehuang
AU - Xu, Ke
N1 - Publisher Copyright:
© USENIX Security 2023. All rights reserved.
PY - 2023
Y1 - 2023
N2 - Anonymity networks, e.g., Tor, are vulnerable to various website fingerprinting (WF) attacks, which allows attackers to perceive user privacy on these networks. However, the defenses developed recently can effectively interfere with WF attacks, e.g., by simply injecting dummy packets. In this paper, we propose a novel WF attack called Robust Fingerprinting (RF), which enables an attacker to fingerprint the Tor traffic under various defenses. Specifically, we develop a robust traffic representation method that generates Traffic Aggregation Matrix (TAM) to fully capture key informative features leaked from Tor traces. By utilizing TAM, an attacker can train a CNN-based classifier that learns common high-level traffic features uncovered by different defenses. We conduct extensive experiments with public real-world datasets to compare RF with state-of-the-art (SOTA) WF attacks. The closed- and open-world evaluation results demonstrate that RF significantly outperforms the SOTA attacks. In particular, RF can effectively fingerprint Tor traffic under the SOTA defenses with an average accuracy improvement of 8.9% over the best existing attack (i.e., Tik-Tok).
AB - Anonymity networks, e.g., Tor, are vulnerable to various website fingerprinting (WF) attacks, which allows attackers to perceive user privacy on these networks. However, the defenses developed recently can effectively interfere with WF attacks, e.g., by simply injecting dummy packets. In this paper, we propose a novel WF attack called Robust Fingerprinting (RF), which enables an attacker to fingerprint the Tor traffic under various defenses. Specifically, we develop a robust traffic representation method that generates Traffic Aggregation Matrix (TAM) to fully capture key informative features leaked from Tor traces. By utilizing TAM, an attacker can train a CNN-based classifier that learns common high-level traffic features uncovered by different defenses. We conduct extensive experiments with public real-world datasets to compare RF with state-of-the-art (SOTA) WF attacks. The closed- and open-world evaluation results demonstrate that RF significantly outperforms the SOTA attacks. In particular, RF can effectively fingerprint Tor traffic under the SOTA defenses with an average accuracy improvement of 8.9% over the best existing attack (i.e., Tik-Tok).
UR - http://www.scopus.com/inward/record.url?scp=85173409179&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:85173409179
T3 - 32nd USENIX Security Symposium, USENIX Security 2023
SP - 607
EP - 624
BT - 32nd USENIX Security Symposium, USENIX Security 2023
PB - USENIX Association
T2 - 32nd USENIX Security Symposium, USENIX Security 2023
Y2 - 9 August 2023 through 11 August 2023
ER -