iconLogo
Published:2026/1/5 15:55:46

敵を無効化!動画を守る最強技術✨

超要約: 敵の攻撃から動画を守る、新しいAI浄化技術!

✨ ギャル的キラキラポイント ✨

● 敵の攻撃をマスクで物理的に破壊!💥 ● 💖CFM💖とインペインティングで動画を修復! ● 高周波ノイズをカットしつつ、大事な情報はキープ!😎

詳細解説いくよー!

続きは「らくらく論文」アプリで

FMVP: Masked Flow Matching for Adversarial Video Purification

Duoxun Tang / Xueyi Zhang / Chak Hin Wang / Xi Xiao / Dasen Dai / Xinhang Jiang / Wentao Shi / Rui Li / Qing Li

Video recognition models remain vulnerable to adversarial attacks, while existing diffusion-based purification methods suffer from inefficient sampling and curved trajectories. Directly regressing clean videos from adversarial inputs often fails to recover faithful content due to the subtle nature of perturbations; this necessitates physically shattering the adversarial structure. Therefore, we propose Flow Matching for Adversarial Video Purification FMVP. FMVP physically shatters global adversarial structures via a masking strategy and reconstructs clean video dynamics using Conditional Flow Matching (CFM) with an inpainting objective. To further decouple semantic content from adversarial noise, we design a Frequency-Gated Loss (FGL) that explicitly suppresses high-frequency adversarial residuals while preserving low-frequency fidelity. We design Attack-Aware and Generalist training paradigms to handle known and unknown threats, respectively. Extensive experiments on UCF-101 and HMDB-51 demonstrate that FMVP outperforms state-of-the-art methods (DiffPure, Defense Patterns (DP), Temporal Shuffling (TS) and FlowPure), achieving robust accuracy exceeding 87% against PGD and 89% against CW attacks. Furthermore, FMVP demonstrates superior robustness against adaptive attacks (DiffHammer) and functions as a zero-shot adversarial detector, attaining detection accuracies of 98% for PGD and 79% for highly imperceptible CW attacks.

cs / cs.CV