English

Make Some Noise: Reliable and Efficient Single-Step Adversarial Training

Machine Learning 2022-10-19 v3 Computer Vision and Pattern Recognition

Abstract

Recently, Wong et al. showed that adversarial training with single-step FGSM leads to a characteristic failure mode named Catastrophic Overfitting (CO), in which a model becomes suddenly vulnerable to multi-step attacks. Experimentally they showed that simply adding a random perturbation prior to FGSM (RS-FGSM) could prevent CO. However, Andriushchenko and Flammarion observed that RS-FGSM still leads to CO for larger perturbations, and proposed a computationally expensive regularizer (GradAlign) to avoid it. In this work, we methodically revisit the role of noise and clipping in single-step adversarial training. Contrary to previous intuitions, we find that using a stronger noise around the clean sample combined with \textit{not clipping} is highly effective in avoiding CO for large perturbation radii. We then propose Noise-FGSM (N-FGSM) that, while providing the benefits of single-step adversarial training, does not suffer from CO. Empirical analyses on a large suite of experiments show that N-FGSM is able to match or surpass the performance of previous state-of-the-art GradAlign, while achieving 3x speed-up. Code can be found in https://github.com/pdejorge/N-FGSM

Keywords

Cite

@article{arxiv.2202.01181,
  title  = {Make Some Noise: Reliable and Efficient Single-Step Adversarial Training},
  author = {Pau de Jorge and Adel Bibi and Riccardo Volpi and Amartya Sanyal and Philip H. S. Torr and Grégory Rogez and Puneet K. Dokania},
  journal= {arXiv preprint arXiv:2202.01181},
  year   = {2022}
}

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Published in NeurIPS 2022

R2 v1 2026-06-24T09:16:19.056Z