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A Data-Free Approach for Targeted Universal Adversarial Perturbation

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Science of Cyber Security (SciSec 2021)

Part of the book series: Lecture Notes in Computer Science ((LNSC,volume 13005))

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Abstract

The existence of adversarial example problem puts forward high demand on the robustness of neural network. This paper proposes a universal adversarial perturbation(UAP) attack method in data-free scenario, which can realize targeted attack to any class specified by the attacker. We design a unique loss function to balance the purpose of perturbing model and targeting label. As far as we know, our method is the first UAP attack method that can achieve targeted attack in data-free scenario. Especially, in federated learning a malicious user can fool other users’ model without being noticed. We hope our attack method can inspire more researchers in the community, and enable them to better understand and defend against UAP attacks.

Supported by organization Nanyang Technological University.

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Acknowledgement

This paper is supported by 1) Singapore Ministry of Education Academic Research Fund Tier 1 RG128/18, Tier 1 RG115/19, Tier 1 RT07/19, Tier 1 RT01/19, Tier 1 RG24/20, and Tier 2 MOE2019-T2-1–176, 2) NTU-WASP Joint Project, 3) Singapore NRF National Satellite of Excellence, Design Science and Technology for Secure Critical Infrastructure NSoE DeST-SCI2019-0012, 4) AI Singapore (AISG) 100 Experiments (100E) programme, and 5) NTU Project for Large Vertical Take-Off & Landing (VTOL) Research Platform.

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Correspondence to Xiaoyu Wang .

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Wang, X., Bai, T., Zhao, J. (2021). A Data-Free Approach for Targeted Universal Adversarial Perturbation. In: Lu, W., Sun, K., Yung, M., Liu, F. (eds) Science of Cyber Security. SciSec 2021. Lecture Notes in Computer Science(), vol 13005. Springer, Cham. https://doi.org/10.1007/978-3-030-89137-4_9

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  • DOI: https://doi.org/10.1007/978-3-030-89137-4_9

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  • Publisher Name: Springer, Cham

  • Print ISBN: 978-3-030-89136-7

  • Online ISBN: 978-3-030-89137-4

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