空间色度移位的难以察觉的对抗例子

A. Aydin, Deniz Sen, Berat Tuna Karli, Oguz Hanoglu, A. Temi̇zel
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引用次数: 12

摘要

深度神经网络已被证明易受各种对抗性扰动的影响。除了广泛研究的基于加性噪声的扰动外,还可以通过在输入图像上应用每像素空间漂移来创建对抗性示例。虽然由于没有加性噪声,基于空间变换的对抗性示例对人类观察者来说看起来更自然,但它们仍然具有由空间变换引起的可见扭曲。由于人类视觉对亮度的失真比色度通道的失真更敏感,这是有损视觉多媒体压缩标准背后的主要思想之一,我们提出了一种基于空间变换的摄动方法,通过仅修改输入图像的颜色分量来创建对抗性示例。虽然在CIFAR-10和NIPS2017对抗性学习挑战数据集上具有竞争性的欺骗率,但使用该方法创建的示例在各种感知质量指标方面具有更好的分数。人类视觉感知研究证实,这些例子看起来更自然,而且往往与原始的对应物难以区分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imperceptible Adversarial Examples by Spatial Chroma-Shift
Deep Neural Networks have been shown to be vulnerable to various kinds of adversarial perturbations. In addition to widely studied additive noise based perturbations, adversarial examples can also be created by applying a per pixel spatial drift on input images. While spatial transformation based adversarial examples look more natural to human observers due to absence of additive noise, they still possess visible distortions caused by spatial transformations. Since the human vision is more sensitive to the distortions in the luminance compared to those in chrominance channels, which is one of the main ideas behind the lossy visual multimedia compression standards, we propose a spatial transformation based perturbation method to create adversarial examples by only modifying the color components of an input image. While having competitive fooling rates on CIFAR-10 and NIPS2017 Adversarial Learning Challenge datasets, examples created with the proposed method have better scores with regards to various perceptual quality metrics. Human visual perception studies validate that the examples are more natural looking and often indistinguishable from their original counterparts.
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