论文标题

多视图深模型的对抗性攻击

Adversarial Attacks for Multi-view Deep Models

论文作者

Sun, Xuli, Sun, Shiliang

论文摘要

最近的工作强调了许多深度机器学习模型对对抗性例子的脆弱性。它引起了人们对对抗性攻击的越来越多的关注,该攻击可用于在部署模型之前评估模型的安全性和鲁棒性。但是,据我们所知,对于多视图深模型的对抗性攻击,没有具体的研究。本文提出了两种多视图攻击策略,两阶段攻击(TSA)和端到端攻击(ETEA)。通过以下温和的假设:已知目标多视图模型的单视图模型已知,我们首先提出了TSA策略。 TSA的主要思想是使用攻击相关的单视图模型生成的对抗示例来攻击多视图模型,通过该模型,最先进的单视图攻击方法直接扩展到多视图方案。然后,当公开提供多视图模型时,我们进一步提出了ETEA策略。将ETEA应用于对目标多视图模型的直接攻击,在该模型中我们开发了三种有效的多视图攻击方法。最后,基于对抗性示例在不同模型之间很好地概括的事实,本文将对对抗性卷积神经网络的对抗性攻击为示例,以验证拟议的多视图攻击的有效性。广泛的实验结果表明,我们的多视图攻击策略能够攻击多视图深模型,并且我们还发现,多视图模型比单视图模型更强大。

Recent work has highlighted the vulnerability of many deep machine learning models to adversarial examples. It attracts increasing attention to adversarial attacks, which can be used to evaluate the security and robustness of models before they are deployed. However, to our best knowledge, there is no specific research on the adversarial attacks for multi-view deep models. This paper proposes two multi-view attack strategies, two-stage attack (TSA) and end-to-end attack (ETEA). With the mild assumption that the single-view model on which the target multi-view model is based is known, we first propose the TSA strategy. The main idea of TSA is to attack the multi-view model with adversarial examples generated by attacking the associated single-view model, by which state-of-the-art single-view attack methods are directly extended to the multi-view scenario. Then we further propose the ETEA strategy when the multi-view model is provided publicly. The ETEA is applied to accomplish direct attacks on the target multi-view model, where we develop three effective multi-view attack methods. Finally, based on the fact that adversarial examples generalize well among different models, this paper takes the adversarial attack on the multi-view convolutional neural network as an example to validate that the effectiveness of the proposed multi-view attacks. Extensive experimental results demonstrate that our multi-view attack strategies are capable of attacking the multi-view deep models, and we additionally find that multi-view models are more robust than single-view models.

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