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Restricted Region Based Iterative Gradient Method for Non-Targeted Attack

机译:基于限制的非目标攻击的迭代梯度方法

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摘要

Neural networks have been widely applied but they are still vulnerable to adversarial examples. More and more defense models have been proposed and they can resist the attacks to the neural networks. In order to generate adversarial examples with good transferability, we propose the restricted region based iterative gradient method (RRI-GM) for non-targeted attack, which aims at generating adversarial examples to make black-box defense models output wrong decision. We first use object detection algorithm to restrict some key regions in the images, since we regard perturbation in the key region affects more than the whole image. To improve the efficiency of attacks, we use gradient-based attack methods and they show good performance. In addition, the process is iterated for multiple rounds to generate adversarial examples with good transferability. Furthermore, we conduct extensive experiments to validate the effectiveness of the proposed method, and the results show that our method can achieve good attack performance against black-box defense models.
机译:神经网络已被广泛应用,但它们仍然容易受到对抗的例子。提出了越来越多的防御模型,它们可以抵制对神经网络的攻击。为了产生具有良好可转移性的对抗性示例,我们提出了基于限制的基于区域的迭代梯度方法(RRI-GM),用于非目标攻击,旨在产生对抗的例子,使黑盒防御模型输出错误的决定。我们首先使用对象检测算法来限制图像中的一些关键区域,因为我们在关键区域中的扰动都会影响超过整个图像。为了提高攻击效率,我们使用基于梯度的攻击方法,它们表现出良好的性能。此外,该过程迭代多个轮,以产生具有良好可转移性的对抗例。此外,我们进行广泛的实验以验证所提出的方法的有效性,结果表明,我们的方法可以实现对黑匣子防御模型的良好攻击性能。

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