End-to-End Multi-Tab Website Fingerprinting Attack: A Detection Perspective
Website fingerprinting attack (WFA) aims to deanonymize the website a user is visiting through anonymous networks channels (e.g., Tor). Despite of remarkable progress in the past years, most existing methods make implicitly a couple of artificial assumptions that (1) only a single website (i.e., sin...
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Zusammenfassung: | Website fingerprinting attack (WFA) aims to deanonymize the website a user is
visiting through anonymous networks channels (e.g., Tor). Despite of remarkable
progress in the past years, most existing methods make implicitly a couple of
artificial assumptions that (1) only a single website (i.e., single-tab) is
visited each time, and (2) website fingerprinting data are pre-trimmed into a
single trace per website manually. In reality, a user often open multiple tabs
for multiple websites spontaneously. Indeed, this multi-tab WFA (MT-WFA)
setting has been studied in a few recent works, but all of them still fail to
fully respect the real-world situations. In particular, the overlapping
challenge between website fingerprinting has never been investigated in depth.
In this work, we redefine the problem of MT-WFA as detecting multiple monitored
traces, given a natural untrimmed traffic data including monitored traces,
unmonitored traces, and potentially unconstrained overlapping between them.
This eliminates the above assumptions, going beyond the conventional single
website fingerprint classification perspective taken by all previous WFA
methods. To tackle this realistic MT-WFA problem, we formulate a novel Website
Fingerprint Detection (WFD) model capable of detecting accurately the start and
end points of all the monitored traces and classifying them jointly, given
long, untrimmed raw traffic data. WFD is end-to-end, with the trace
localization and website classification integrated in a single unified
pipeline. To enable quantitative evaluation in our MT-WFA setting, we introduce
new performance metrics. Extensive experiments on several newly constructed
benchmarks show that our WFD outperforms the state-of-the-art alternative
methods in both accuracy and efficiency by a large margin, even with a very
small training set. Code is available at
https://github.com/WFDetector/WFDetection |
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DOI: | 10.48550/arxiv.2203.06376 |