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Black-Box Adversarial Attack with Transferable Model-based Embedding

About

We present a new method for black-box adversarial attack. Unlike previous methods that combined transfer-based and scored-based methods by using the gradient or initialization of a surrogate white-box model, this new method tries to learn a low-dimensional embedding using a pretrained model, and then performs efficient search within the embedding space to attack an unknown target network. The method produces adversarial perturbations with high level semantic patterns that are easily transferable. We show that this approach can greatly improve the query efficiency of black-box adversarial attack across different target network architectures. We evaluate our approach on MNIST, ImageNet and Google Cloud Vision API, resulting in a significant reduction on the number of queries. We also attack adversarially defended networks on CIFAR10 and ImageNet, where our method not only reduces the number of queries, but also improves the attack success rate.

Zhichao Huang, Tong Zhang• 2019

Related benchmarks

TaskDatasetResultRank
Untargeted Adversarial AttackDenseNet-121
Fooling Rate99.5
5
Untargeted Adversarial AttackResNext-50
Fooling Rate98.9
5
Untargeted Adversarial AttackVGG-19
Fooling Rate99.7
5
Targeted Adversarial AttackVGG-19
Fooling Rate89.2
4
Targeted Adversarial AttackDenseNet-121
Fooling Rate90.5
4
Targeted Adversarial AttackResNext-50
Fooling Rate85.1
4
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