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Poster

Adversarial Purification via Super-Resolution and Diffusion

Mincheol Park · Cheonjun Park · Seungseop Lim · Mijin Koo · Hyunwuk Lee · Won Woo Ro · Suhyun Kim


Abstract:

Deep neural networks are widely used in various computer vision tasks, but their vulnerability to adversarial perturbations remains a significant challenge for reliable decision-making. Adversarial purification, a test-time defense strategy, has shown potential in countering these threats by removing noise through diffusion models. This plug-and-play method, using off-the-shelf models, appears highly effective. However, the purified data from diffusion often deviates more from the original data than the adversarial examples, leading to missing critical information and causing misclassification. In this study, we propose that upsampling with Super-Resolution (SR), followed by downsampling, can also aid in eliminating adversarial noise, similar to the noise addition and removal process in diffusion models. While SR alone is not as effective as the diffusion process, it better restores the original features typically associated with the early layers of networks. By combining SR, which initially mitigates damage to early-layer information from adversarial attacks, with diffusion, we observe a synergistic effect, leading to enhanced performance over diffusion models alone. Our comprehensive evaluations demonstrate that this combined approach, PuriFlow, significantly improves accuracy and robustness, working synergistically with state-of-the-art methods.

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