FINDING · DETECTION
Decision tree classifiers (XGBoost) can flag 90% of Facet multimedia-tunneling traffic while erroneously flagging only 2% of legitimate Skype connections (FPR=2%). Against DeltaShaper at its most conservative configuration (h160×120, 4×4, 6, 1i), XGBoost achieves AUC=0.85, demonstrating that existing unobservability claims for all three systems (Facet, CovertCast, DeltaShaper) were flawed.
From 2018-barradas-effective — Effective Detection of Multimedia Protocol Tunneling using Machine Learning · §4, Table 3 · 2018 · USENIX Security Symposium
Implications
- Packet-length distribution is the primary feature exploited by XGBoost; steganographic transports must actively shape or randomize packet-length histograms, not just overlay content on top of a legitimate stream.
- Evaluating unobservability solely with similarity-based classifiers (χ², KL) dramatically underestimates censor capability — any new multimedia-tunneling scheme must be stress-tested against decision-tree ensembles before deployment.
Tags
Extracted by claude-sonnet-4-6 — review before relying.