A delayed Elastic-Net approach for performing adversarial attacks

Brais Cancela, V. Bolón-Canedo, Amparo Alonso-Betanzos
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引用次数: 1

Abstract

With the rise of the so-called Adversarial Attacks, there is an increased concern on model security. In this paper we present two different contributions: novel measures of robustness (based on adversarial attacks) and a novel adversarial attack. The key idea behind these metrics is to obtain a measure that could compare different architectures, with independence of how the input is preprocessed (robustness against different input sizes and value ranges). To do so, a novel adversarial attack is presented, performing a delayed elastic-net adversarial attack (constraints are only used whenever a successful adversarial attack is obtained). Experimental results show that our approach obtains state-of-the-art adversarial samples, in terms of minimal perturbation distance. Finally, a benchmark of ImageNet pretrained models is used to conduct experiments aiming to shed some light about which model should be selected whenever security is a role factor.
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执行对抗性攻击的延迟弹性网络方法
随着所谓的对抗性攻击的兴起,人们越来越关注模型的安全性。在本文中,我们提出了两个不同的贡献:新的鲁棒性度量(基于对抗性攻击)和一种新的对抗性攻击。这些指标背后的关键思想是获得一个可以比较不同体系结构的度量,并且独立于输入的预处理方式(对不同输入大小和值范围的鲁棒性)。为此,提出了一种新的对抗攻击,执行延迟弹性网对抗攻击(只有在获得成功的对抗攻击时才使用约束)。实验结果表明,就最小扰动距离而言,我们的方法获得了最先进的对抗样本。最后,使用ImageNet预训练模型的基准进行实验,旨在揭示当安全是一个角色因素时应该选择哪个模型。
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