LGCRMLAug 17, 2019

Nesterov Accelerated Gradient and Scale Invariance for Adversarial Attacks

arXiv:1908.06281v5769 citations
AI Analysis

This work addresses the challenge of creating more transferable adversarial attacks for deep learning models, which is incremental as it builds on existing gradient-based methods.

The paper tackles the problem of poor transferability of adversarial examples in black-box settings by proposing two new methods, NI-FGSM and SIM, which when combined achieve higher attack success rates than state-of-the-art gradient-based attacks on ImageNet.

Deep learning models are vulnerable to adversarial examples crafted by applying human-imperceptible perturbations on benign inputs. However, under the black-box setting, most existing adversaries often have a poor transferability to attack other defense models. In this work, from the perspective of regarding the adversarial example generation as an optimization process, we propose two new methods to improve the transferability of adversarial examples, namely Nesterov Iterative Fast Gradient Sign Method (NI-FGSM) and Scale-Invariant attack Method (SIM). NI-FGSM aims to adapt Nesterov accelerated gradient into the iterative attacks so as to effectively look ahead and improve the transferability of adversarial examples. While SIM is based on our discovery on the scale-invariant property of deep learning models, for which we leverage to optimize the adversarial perturbations over the scale copies of the input images so as to avoid "overfitting" on the white-box model being attacked and generate more transferable adversarial examples. NI-FGSM and SIM can be naturally integrated to build a robust gradient-based attack to generate more transferable adversarial examples against the defense models. Empirical results on ImageNet dataset demonstrate that our attack methods exhibit higher transferability and achieve higher attack success rates than state-of-the-art gradient-based attacks.

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