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ADBM: Adversarial diffusion bridge model for reliable adversarial purification

1 August 2024
Xiao-Li Li
Wenxuan Sun
Huanran Chen
Qiongxiu Li
Yining Liu
Yingzhe He
Jie Shi
Xiaolin Hu
    AAML
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Abstract

Recently Diffusion-based Purification (DiffPure) has been recognized as an effective defense method against adversarial examples. However, we find DiffPure which directly employs the original pre-trained diffusion models for adversarial purification, to be suboptimal. This is due to an inherent trade-off between noise purification performance and data recovery quality. Additionally, the reliability of existing evaluations for DiffPure is questionable, as they rely on weak adaptive attacks. In this work, we propose a novel Adversarial Diffusion Bridge Model, termed ADBM. ADBM directly constructs a reverse bridge from the diffused adversarial data back to its original clean examples, enhancing the purification capabilities of the original diffusion models. Through theoretical analysis and experimental validation across various scenarios, ADBM has proven to be a superior and robust defense mechanism, offering significant promise for practical applications.

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@article{li2025_2408.00315,
  title={ ADBM: Adversarial diffusion bridge model for reliable adversarial purification },
  author={ Xiao Li and Wenxuan Sun and Huanran Chen and Qiongxiu Li and Yining Liu and Yingzhe He and Jie Shi and Xiaolin Hu },
  journal={arXiv preprint arXiv:2408.00315},
  year={ 2025 }
}
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