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(Certified!!) Adversarial Robustness for Free!

About

In this paper we show how to achieve state-of-the-art certified adversarial robustness to 2-norm bounded perturbations by relying exclusively on off-the-shelf pretrained models. To do so, we instantiate the denoised smoothing approach of Salman et al. 2020 by combining a pretrained denoising diffusion probabilistic model and a standard high-accuracy classifier. This allows us to certify 71% accuracy on ImageNet under adversarial perturbations constrained to be within an 2-norm of 0.5, an improvement of 14 percentage points over the prior certified SoTA using any approach, or an improvement of 30 percentage points over denoised smoothing. We obtain these results using only pretrained diffusion models and image classifiers, without requiring any fine tuning or retraining of model parameters.

Nicholas Carlini, Florian Tramer, Krishnamurthy Dj Dvijotham, Leslie Rice, Mingjie Sun, J. Zico Kolter• 2022

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet A
Top-1 Acc35.3
553
Image ClassificationImageNet-R
Top-1 Acc69.3
474
Image ClassificationCIFAR-10 corrupted (test)
Acc88.8
30
Certified RobustnessCIFAR-10 (test)
Accuracy (Standard)92.8
26
Image ClassificationCIFAR-10.1 1.0 (test)
Accuracy73
14
Certified AccuracyCIFAR-10 (test)
Certified Accuracy (r=0.0)86.61
9
Certified AccuracyImageNet (val)
Certified Accuracy (Radius 0.0)80.4
7
Image ClassificationImageNet IN-1K (val)
Empirical Accuracy80.9
7
Certified RobustnessCIFAR-10
Certified Acc (eps=0.0)87.6
6
Certified RobustnessImageNet 64
Certified Acc (eps=0.0)53
3
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