Adversarial robustness improvement for deep neural networks

IF 2.4 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine Vision and Applications Pub Date : 2024-03-14 DOI:10.1007/s00138-024-01519-1
Charis Eleftheriadis, Andreas Symeonidis, Panagiotis Katsaros
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Abstract

Deep neural networks (DNNs) are key components for the implementation of autonomy in systems that operate in highly complex and unpredictable environments (self-driving cars, smart traffic systems, smart manufacturing, etc.). It is well known that DNNs are vulnerable to adversarial examples, i.e. minimal and usually imperceptible perturbations, applied to their inputs, leading to false predictions. This threat poses critical challenges, especially when DNNs are deployed in safety or security-critical systems, and renders as urgent the need for defences that can improve the trustworthiness of DNN functions. Adversarial training has proven effective in improving the robustness of DNNs against a wide range of adversarial perturbations. However, a general framework for adversarial defences is needed that will extend beyond a single-dimensional assessment of robustness improvement; it is essential to consider simultaneously several distance metrics and adversarial attack strategies. Using such an approach we report the results from extensive experimentation on adversarial defence methods that could improve DNNs resilience to adversarial threats. We wrap up by introducing a general adversarial training methodology, which, according to our experimental results, opens prospects for an holistic defence against a range of diverse types of adversarial perturbations.

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提高深度神经网络的对抗鲁棒性
深度神经网络(DNN)是在高度复杂和不可预测的环境(自动驾驶汽车、智能交通系统、智能制造等)中运行的系统实现自动驾驶的关键组件。众所周知,DNNs 很容易受到对抗范例的影响,即对其输入施加最小且通常难以察觉的扰动,从而导致错误预测。这种威胁带来了严峻的挑战,尤其是当 DNN 被部署到安全或安保关键系统中时,因此迫切需要能够提高 DNN 功能可信度的防御措施。事实证明,对抗性训练能有效提高 DNN 的鲁棒性,使其免受各种对抗性扰动的影响。然而,我们需要一个通用的对抗性防御框架,它将超越对鲁棒性改进的单一维度评估;同时考虑多个距离度量和对抗性攻击策略至关重要。利用这种方法,我们报告了对抗性防御方法的广泛实验结果,这些方法可以提高 DNN 对对抗性威胁的复原力。最后,我们介绍了一种通用的对抗训练方法,根据我们的实验结果,这种方法为全面防御各种类型的对抗扰动开辟了前景。
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来源期刊
Machine Vision and Applications
Machine Vision and Applications 工程技术-工程:电子与电气
CiteScore
6.30
自引率
3.00%
发文量
84
审稿时长
8.7 months
期刊介绍: Machine Vision and Applications publishes high-quality technical contributions in machine vision research and development. Specifically, the editors encourage submittals in all applications and engineering aspects of image-related computing. In particular, original contributions dealing with scientific, commercial, industrial, military, and biomedical applications of machine vision, are all within the scope of the journal. Particular emphasis is placed on engineering and technology aspects of image processing and computer vision. The following aspects of machine vision applications are of interest: algorithms, architectures, VLSI implementations, AI techniques and expert systems for machine vision, front-end sensing, multidimensional and multisensor machine vision, real-time techniques, image databases, virtual reality and visualization. Papers must include a significant experimental validation component.
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