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Adversarial purification with Score-based generative models

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arxiv 2106.06041 v1 pith:JL3WFIAU submitted 2021-06-11 cs.LG cs.CR

Adversarial purification with Score-based generative models

classification cs.LG cs.CR
keywords purificationadversarialimagesmethodattackedmodeltrainedattacks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While adversarial training is considered as a standard defense method against adversarial attacks for image classifiers, adversarial purification, which purifies attacked images into clean images with a standalone purification model, has shown promises as an alternative defense method. Recently, an Energy-Based Model (EBM) trained with Markov-Chain Monte-Carlo (MCMC) has been highlighted as a purification model, where an attacked image is purified by running a long Markov-chain using the gradients of the EBM. Yet, the practicality of the adversarial purification using an EBM remains questionable because the number of MCMC steps required for such purification is too large. In this paper, we propose a novel adversarial purification method based on an EBM trained with Denoising Score-Matching (DSM). We show that an EBM trained with DSM can quickly purify attacked images within a few steps. We further introduce a simple yet effective randomized purification scheme that injects random noises into images before purification. This process screens the adversarial perturbations imposed on images by the random noises and brings the images to the regime where the EBM can denoise well. We show that our purification method is robust against various attacks and demonstrate its state-of-the-art performances.

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  1. Memory Efficient Full-gradient Attacks (MEFA) Framework for Adversarial Defense Evaluations

    cs.LG 2026-05 unverdicted novelty 5.0

    MEFA enables exact full-gradient white-box attacks on iterative stochastic purification defenses like diffusion and Langevin EBMs by trading recomputation for lower memory, revealing vulnerabilities missed by approxim...