Multi-class Detection for Off The Shelf transfer-based Black Box Attacks

Niklas Bunzel, Dominic Böringer
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Abstract

Nowadays, deep neural networks are used for a variety of tasks in a wide range of application areas. Despite achieving state-of-the-art results in computer vision and image classification tasks, neural networks are vulnerable to adversarial attacks. Various attacks have been presented in which small perturbations of an input image are sufficient to change the predictions of a model. Furthermore, the changes in the input image are imperceptible to the human eye. In this paper, we propose a multi-class detector framework based on image statistics. We implemented a detection scheme for each attack and evaluated our detectors against Attack on Attention (AoA) and FGSM achieving a detection rate of 70% and 75% respectivley, with a FPR of . The multi-class detector identifies 77% of attacks as adversarial, while remaining 90% of the benign images, demonstrating that we can detect out-of-the-box attacks.
基于传输的黑盒攻击多类检测
如今,深度神经网络在广泛的应用领域中被用于各种任务。尽管在计算机视觉和图像分类任务中取得了最先进的成果,但神经网络很容易受到对抗性攻击。已经提出了各种攻击,其中输入图像的微小扰动足以改变模型的预测。此外,人眼无法察觉输入图像的变化。本文提出了一种基于图像统计的多类检测器框架。我们对每种攻击都实施了检测方案,并对我们的检测器对注意力攻击(AoA)和FGSM进行了评估,检测率分别为70%和75%,FPR为。多类别检测器将77%的攻击识别为对抗性图像,而剩余的90%为良性图像,这表明我们可以检测出开箱即用的攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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