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Perceptual Evaluation of Adversarial Attacks for CNN-based Image Classification

机译:基于CNN的图像分类的对抗性攻击的感知评估

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Deep neural networks (DNNs) have recently achieved state-of-the-art performance and provide significant progress in many machine learning tasks, such as image classification, speech processing, natural language processing, etc. However, recent studies have shown that DNNs are vulnerable to adversarial attacks. For instance, in the image classification domain, adding small imperceptible perturbations to the input image is sufficient to fool the DNN and to cause misclassification. The perturbed image, called adversarial example, should be visually as close as possible to the original image. However, all the works proposed in the literature for generating adversarial examples have used the Lp norms (L0, L2 and L) as distance metrics to quantify the similarity between the original image and the adversarial example. Nonetheless, the Lp norms do not correlate with human judgment, making them not suitable to reliably assess the perceptual similarity/fidelity of adversarial examples. In this paper, we present a database for visual fidelity assessment of adversarial examples. We describe the creation of the database and evaluate the performance of fifteen state-of-the-art full-reference (FR) image fidelity assessment metrics that could substitute Lp norms. The database as well as subjective scores are publicly available to help designing new metrics for adversarial examples and to facilitate future research works.
机译:深度神经网络(DNN)最近已经达到了最先进的性能,并在许多机器学习任务(例如图像分类,语音处理,自然语言处理等)中取得了显着进步。但是,最近的研究表明,DNN是容易受到对抗攻击。例如,在图像分类域中,向输入图像添加较小的不可察觉的扰动足以愚弄DNN并导致错误分类。被扰动的图像(称为对抗示例)在视觉上应尽可能接近原始图像。但是,文献中提出的所有用于生成对抗性示例的作品都使用L p 规范(L 0 ,L 2 和我 )作为距离量度,以量化原始图像和对抗示例之间的相似度。尽管如此,L p 规范与人类的判断没有关联,因此它们不适合可靠地评估对抗性示例的感知相似性/保真度。在本文中,我们提供了一个用于对抗示例视觉保真度评估的数据库。我们描述了数据库的创建并评估了15种可以替代L的最新全参考(FR)图像保真度评估指标的性能 p 规范。该数据库以及主观分数可公开获得,以帮助设计对抗性示例的新指标并促进未来的研究工作。

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