论文标题

一致的攻击:体现视觉导航的通用对抗性扰动

Consistent Attack: Universal Adversarial Perturbation on Embodied Vision Navigation

论文作者

Ying, Chengyang, Qiaoben, You, Zhou, Xinning, Su, Hang, Ding, Wenbo, Ai, Jianyong

论文摘要

视觉导航中体现的代理,加上深层神经网络,引起了人们越来越多的关注。但是,已经显示出深层神经网络容易受到恶意对抗性的噪音,这可能会导致体现视力导航中的灾难性失败。在不同的对抗噪声中,普遍的对抗扰动(UAP),即,在代理的每个输入框架上应用了恒定的图像敏捷扰动,在体现视觉导航中起着至关重要的作用,因为它们在攻击过程中是计算有效的和应用程序实践的。但是,现有的UAP方法忽略了体现视觉导航的系统动力学,可能是最佳的。为了将UAP扩展到顺序的决策设置,我们将Universal Noise $δ$下的受干扰环境制定为$δ$ disted的Markov决策过程($δ$ -MDP)。基于该公式,我们分析了$δ$ -MDP的性能,并提出了两种新型一致的攻击方法,称为奖励UAP和轨迹UAP,用于攻击体现的剂,它们考虑了MDP的动态,并通过估计受干扰分布和受干扰的Q功能来计算通用噪声。对于各种受害者模型,我们一致的攻击可能会导致其在具有不同数据集和不同场景的栖息地中的栖息地的表现大大下降。广泛的实验结果表明,将具体视觉导航方法应用于现实世界中存在严重的潜在风险。

Embodied agents in vision navigation coupled with deep neural networks have attracted increasing attention. However, deep neural networks have been shown vulnerable to malicious adversarial noises, which may potentially cause catastrophic failures in Embodied Vision Navigation. Among different adversarial noises, universal adversarial perturbations (UAP), i.e., a constant image-agnostic perturbation applied on every input frame of the agent, play a critical role in Embodied Vision Navigation since they are computation-efficient and application-practical during the attack. However, existing UAP methods ignore the system dynamics of Embodied Vision Navigation and might be sub-optimal. In order to extend UAP to the sequential decision setting, we formulate the disturbed environment under the universal noise $δ$, as a $δ$-disturbed Markov Decision Process ($δ$-MDP). Based on the formulation, we analyze the properties of $δ$-MDP and propose two novel Consistent Attack methods, named Reward UAP and Trajectory UAP, for attacking Embodied agents, which consider the dynamic of the MDP and calculate universal noises by estimating the disturbed distribution and the disturbed Q function. For various victim models, our Consistent Attack can cause a significant drop in their performance in the PointGoal task in Habitat with different datasets and different scenes. Extensive experimental results indicate that there exist serious potential risks for applying Embodied Vision Navigation methods to the real world.

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