While adversarial attacks on deep image classification models pose serious security concerns in practice, this paper suggests a novel paradigm where the concept of adversarial attacks can benefit classification performance, which we call amicable aid. We show that by taking the opposite search direction of perturbation, an image can be converted to another yielding higher confidence by the classification model and even a wrongly classified image can be made to be correctly classified. Furthermore, with a large amount of perturbation, an image can be made unrecognizable by human eyes, while it is correctly recognized by the model. The mechanism of the amicable aid is explained in the viewpoint of the underlying natural image manifold. We also consider universal amicable perturbations, i.e., a fixed perturbation can be applied to multiple images to improve their classification results. While it is challenging to find such perturbations, we show that making the decision boundary as perpendicular to the image manifold as possible via training with modified data is effective to obtain a model for which universal amicable perturbations are more easily found. Finally, we discuss several application scenarios where the amicable aid can be useful, including secure image communication, privacy-preserving image communication, and protection against adversarial attacks.
翻译:虽然对深图像分类模型的对抗性攻击在实践中引起了严重的安全关切,但本文建议了一种新的范式,即对抗性攻击的概念能够有利于分类性能,我们称之为友好援助。我们表明,通过采用相反的扰动搜索方向,可以将图像转换为另一个能产生更高信任的图像,通过分类模式,甚至错误的分类图像,可以进行正确的分类。此外,由于大量的扰动,一个图像可以被人类眼睛无法辨认,而模型却正确地承认了它。友好援助机制从自然图像的基本方形的角度来解释。我们还考虑普遍友好性扰动,即固定的扰动可以应用于多个图像,以提高其分类结果。虽然发现这种扰动性很有挑战性,但我们表明,通过对修改数据进行培训,使决策界限与图像的方格相交错是有效的,因此可以更容易地找到一种模式。最后,我们讨论了友好性援助的一些应用情景,包括安全性图像、隐私保护和保密性图像。