FINDING · EVALUATION

BM-Net achieves a 99.65% binary detection F1 score distinguishing watermarked from natural Tor flows, and a 97.5% macro-F1 score for fine-grained modulation classification across sinusoidal, square-wave, and triangular patterns. The fine-grained test set contains 201 held-out samples collected from ten clients across five geographic regions (Europe, North America, Australia, Southeast Asia, East Asia), with training traces including traffic collected under WTF-PAD and Walkie-Talkie defenses.

From 2026-fan-activeflowmark-assessing-torActiveFlowMark: Assessing Tor Anonymity under Active Bandwidth Watermarking · §VI-D, Table III, Table V · 2026 · arXiv preprint

Implications

Tags

censors
generic
techniques
flow-correlationml-classifiertraffic-shape
defenses
torrandomization

Extracted by claude-sonnet-4-6 — review before relying.