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Black-box Adversarial Attacks with Limited Queries and Information

About

Current neural network-based classifiers are susceptible to adversarial examples even in the black-box setting, where the attacker only has query access to the model. In practice, the threat model for real-world systems is often more restrictive than the typical black-box model where the adversary can observe the full output of the network on arbitrarily many chosen inputs. We define three realistic threat models that more accurately characterize many real-world classifiers: the query-limited setting, the partial-information setting, and the label-only setting. We develop new attacks that fool classifiers under these more restrictive threat models, where previous methods would be impractical or ineffective. We demonstrate that our methods are effective against an ImageNet classifier under our proposed threat models. We also demonstrate a targeted black-box attack against a commercial classifier, overcoming the challenges of limited query access, partial information, and other practical issues to break the Google Cloud Vision API.

Andrew Ilyas, Logan Engstrom, Anish Athalye, Jessy Lin• 2018

Related benchmarks

TaskDatasetResultRank
Untargeted Score-based Black-box AttackImageNet
ASR100
96
Targeted Score-based Black-box AttackImageNet
ASR54.3
96
Adversarial AttackTinyImageNet
Mean Queries/Image1.31e+3
30
Untargeted Adversarial AttackImageNet (test)--
26
Untargeted Score-based Black-box AttackFood101
ASR100
6
Untargeted Score-based Black-box AttackObjectNet
ASR99.5
6
Targeted Score-based Black-box AttackObjectNet
ASR22
6
Targeted Score-based Black-box AttackFood101
ASR29.5
6
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