Title of article :
Momentum Contrast Self-Supervised Based Training for Adversarial Robustness
Author/Authors :
Moshavash ، Monireh Data and Network Security Lab - Sharif University of Technology , Eftekhari ، Mahdi Data and Network Security Lab - Sharif University of Technology , Bahraman ، Kaveh Data and Network Security Lab - Sharif University of Technology
From page :
33
To page :
43
Abstract :
By the rapid progress of deep learning and its use in a variety of applications, however, deep networks have shown that they are vulnerable to adversarial examples. Recently developed researches show that using self-supervised learning (SSL) in various ways results in increasing network robustness. This paper examines the e ect of a particular type of Contrastive SelfSupervised learning (CSSL) called Momentum Contrast (MoCo) on increasing network robustness to adversarial examples. For this purpose, MoCo is employed as a pre-text task and a deep network is pre-trained for this task. Then ne-tuning will cause to increase the robustness of the network against adversarial attacks examples. A new attack method is introduced based on MoCo and one of the Projected Gradient Descent (PGD) or Fast Gradient Sign (FGSM) methods that do not require any labeled data. Using this corrupted data and adversarial training method, a deep network is pre-trained and the representation provided by it is used to ne-tune downstream tasks that results in increasing network robustness. For an instance, the setup including Resnet50 structure, PGD attack, and MoCo-v1 shows 2.79%, 2%, and 1.35% of improvements comparing to the Jigsaw, Rotation, Sel e, respectively. More details of experiments and the improvements raised by MoCo are given in the results part and show the superiority of MoCo based models on CIFAR-10 and CIFAR-10-C datasets. Also, the obtained results for validating the robustness of proposed models against various noises with di erent corruption strengths, con rm the resistance of the proposed methods.
Keywords :
Adversarial Attack , Defense , Projected Gradient Descent , Robust Accuracy
Journal title :
Journal of Computing and Security
Journal title :
Journal of Computing and Security
Record number :
2673241
Link To Document :
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