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Provable Defense Against Geometric Transformations

About

Geometric image transformations that arise in the real world, such as scaling and rotation, have been shown to easily deceive deep neural networks (DNNs). Hence, training DNNs to be certifiably robust to these perturbations is critical. However, no prior work has been able to incorporate the objective of deterministic certified robustness against geometric transformations into the training procedure, as existing verifiers are exceedingly slow. To address these challenges, we propose the first provable defense for deterministic certified geometric robustness. Our framework leverages a novel GPU-optimized verifier that can certify images between 60$\times$ to 42,600$\times$ faster than existing geometric robustness verifiers, and thus unlike existing works, is fast enough for use in training. Across multiple datasets, our results show that networks trained via our framework consistently achieve state-of-the-art deterministic certified geometric robustness and clean accuracy. Furthermore, for the first time, we verify the geometric robustness of a neural network for the challenging, real-world setting of autonomous driving.

Rem Yang, Jacob Laurel, Sasa Misailovic, Gagandeep Singh• 2022

Related benchmarks

TaskDatasetResultRank
Geometric Robustness CertificationTinyImageNet VNN-Comp'24 model
Certified Accuracy (%)10
10
Certified Robustness (Scaling 1)CIFAR10
Certified Accuracy24
6
Certified Robustness (Shearing 2)CIFAR10
Certified Accuracy23
6
Certified Robustness (Shearing 2)TinyImageNet VNNComp'24
Certified Accuracy (%)47
6
Certified Robustness (Rotation 10)CIFAR10
Certified Accuracy (%) (Rotation 10)23
5
Certified Robustness (Rotation 30)MNIST
Certified Accuracy (Rotation 30)70
5
Certified Robustness (Scaling 2)TinyImageNet VNNComp'24
Certified Accuracy (%)35
5
Certified RobustnessCIFAR-10
Certified Radius (L-inf)33.2
4
Geometric CertificationCIFAR10 R(10°)
Certified Accuracy63.2
2
Geometric CertificationTinyImageNet R(5°)
Certified Accuracy13.1
2
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