GSmooth: Certified Robustness Against Semantic Transformations via Generalized Randomized Smoothing
Abstract
Certified defenses such as randomized smoothing have shown promise towards building reliable machine learning systems against $\ell_p$ norm bounded attacks. However, existing methods are insufficient or unable to provably defend against semantic transformations, especially those without closed-form expressions (such as defocus blur and pixelate), which are more common in practice and often unrestricted. To fill up this gap, we propose generalized randomized smoothing (GSmooth), a unified theoretical framework for certifying robustness against general semantic transformations via a novel dimension augmentation strategy. Under the GSmooth framework, we present a scalable algorithm that uses a surrogate image-to-image network to approximate the complex transformation. The surrogate model provides a powerful tool for studying the properties of semantic transformations and certifying robustness. Experimental results on several datasets demonstrate the effectiveness of our approach for robustness certification against multiple kinds of semantic transformations and corruptions, which is not achievable by the alternative baselines.
Cite
Text
Hao et al. "GSmooth: Certified Robustness Against Semantic Transformations via Generalized Randomized Smoothing." International Conference on Machine Learning, 2022.Markdown
[Hao et al. "GSmooth: Certified Robustness Against Semantic Transformations via Generalized Randomized Smoothing." International Conference on Machine Learning, 2022.](https://mlanthology.org/icml/2022/hao2022icml-gsmooth/)BibTeX
@inproceedings{hao2022icml-gsmooth,
title = {{GSmooth: Certified Robustness Against Semantic Transformations via Generalized Randomized Smoothing}},
author = {Hao, Zhongkai and Ying, Chengyang and Dong, Yinpeng and Su, Hang and Song, Jian and Zhu, Jun},
booktitle = {International Conference on Machine Learning},
year = {2022},
pages = {8465-8483},
volume = {162},
url = {https://mlanthology.org/icml/2022/hao2022icml-gsmooth/}
}