Salient Information Preserving Adversarial Training Improves Clean and Robust Accuracy
Journal:
arXiv
Published Date:
Jan 15, 2025
Abstract
In this work we introduce Salient Information Preserving Adversarial Training
(SIP-AT), an intuitive method for relieving the robustness-accuracy trade-off
incurred by traditional adversarial training. SIP-AT uses salient image regions
to guide the adversarial training process in such a way that fragile features
deemed meaningful by an annotator remain unperturbed during training, allowing
models to learn highly predictive non-robust features without sacrificing
overall robustness. This technique is compatible with both human-based and
automatically generated salience estimates, allowing SIP-AT to be used as a
part of human-driven model development without forcing SIP-AT to be reliant
upon additional human data. We perform experiments across multiple datasets and
architectures and demonstrate that SIP-AT is able to boost the clean accuracy
of models while maintaining a high degree of robustness against attacks at
multiple epsilon levels. We complement our central experiments with an
observational study measuring the rate at which human subjects successfully
identify perturbed images. This study helps build a more intuitive
understanding of adversarial attack strength and demonstrates the heightened
importance of low-epsilon robustness. Our results demonstrate the efficacy of
SIP-AT and provide valuable insight into the risks posed by adversarial samples
of various strengths.