DiffBreak: Is Diffusion-Based Purification Robust?
November 25, 2024 Β· Declared Dead Β· π Advances in Neural Information Processing Systems (NeurIPS), 2025
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Authors
Andre Kassis, Urs Hengartner, Yaoliang Yu
arXiv ID
2411.16598
Category
cs.CR: Cryptography & Security
Cross-listed
cs.CV,
cs.LG
Citations
1
Venue
Advances in Neural Information Processing Systems (NeurIPS), 2025
Last Checked
4 months ago
Abstract
Diffusion-based purification (DBP) has become a cornerstone defense against adversarial examples (AEs), regarded as robust due to its use of diffusion models (DMs) that project AEs onto the natural data manifold. We refute this core claim, theoretically proving that gradient-based attacks effectively target the DM rather than the classifier, causing DBP's outputs to align with adversarial distributions. This prompts a reassessment of DBP's robustness, attributing it to two critical flaws: incorrect gradients and inappropriate evaluation protocols that test only a single random purification of the AE. We show that with proper accounting for stochasticity and resubmission risk, DBP collapses. To support this, we introduce DiffBreak, the first reliable toolkit for differentiation through DBP, eliminating gradient flaws that previously further inflated robustness estimates. We also analyze the current defense scheme used for DBP where classification relies on a single purification, pinpointing its inherent invalidity. We provide a statistically grounded majority-vote (MV) alternative that aggregates predictions across multiple purified copies, showing partial but meaningful robustness gain. We then propose a novel adaptation of an optimization method against deepfake watermarking, crafting systemic perturbations that defeat DBP even under MV, challenging DBP's viability.
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