Reconstruction-Based Adversarial Attack Detection in Vision-Based Autonomous Driving Systems

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-11-07 DOI:10.3390/make5040080
Manzoor Hussain, Jang-Eui Hong
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Abstract

The perception system is a safety-critical component that directly impacts the overall safety of autonomous driving systems (ADSs). It is imperative to ensure the robustness of the deep-learning model used in the perception system. However, studies have shown that these models are highly vulnerable to the adversarial perturbation of input data. The existing works mainly focused on studying the impact of these adversarial attacks on classification rather than regression models. Therefore, this paper first introduces two generalized methods for perturbation-based attacks: (1) We used naturally occurring noises to create perturbations in the input data. (2) We introduce a modified square, HopSkipJump, and decision-based/boundary attack to attack the regression models used in ADSs. Then, we propose a deep-autoencoder-based adversarial attack detector. In addition to offline evaluation metrics (e.g., F1 score and precision, etc.), we introduce an online evaluation framework to evaluate the robustness of the model under attack. The framework considers the reconstruction loss of the deep autoencoder that validates the robustness of the models under attack in an end-to-end fashion at runtime. Our experimental results showed that the proposed adversarial attack detector could detect square, HopSkipJump, and decision-based/boundary attacks with a true positive rate (TPR) of 93%.
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基于视觉的自动驾驶系统中基于重构的对抗攻击检测
感知系统是直接影响自动驾驶系统(ads)整体安全性的安全关键部件。在感知系统中,必须保证深度学习模型的鲁棒性。然而,研究表明,这些模型极易受到输入数据的对抗性扰动的影响。现有的工作主要集中在研究这些对抗性攻击对分类的影响,而不是回归模型。因此,本文首先介绍了两种基于扰动攻击的广义方法:(1)我们使用自然产生的噪声在输入数据中产生扰动。(2)引入改进的方形算法HopSkipJump和基于决策/边界攻击来攻击ads中使用的回归模型。然后,我们提出了一种基于深度自编码器的对抗性攻击检测器。除了离线评估指标(例如F1分数和精度等)外,我们还引入了一个在线评估框架来评估受攻击模型的鲁棒性。该框架考虑了深度自编码器的重建损失,在运行时以端到端方式验证受攻击模型的鲁棒性。实验结果表明,所提出的对抗性攻击检测器可以检测到正方形攻击、HopSkipJump攻击和基于决策/边界攻击,其真阳性率(TPR)为93%。
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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