Random Spiking and Systematic Evaluation of Defenses Against Adversarial Examples

Huangyi Ge, Sze Yiu Chau, Ninghui Li
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引用次数: 1

Abstract

Image classifiers often suffer from adversarial examples, which are generated by strategically adding a small amount of noise to input images to trick classifiers into misclassification. Over the years, many defense mechanisms have been proposed, and different researchers have made seemingly contradictory claims on their effectiveness. We present an analysis of possible adversarial models, and propose an evaluation framework for comparing different defense mechanisms. As part of the framework, we introduce a more powerful and realistic adversary strategy. Furthermore, we propose a new defense mechanism called Random Spiking (RS), which generalizes dropout and introduces random noises in the training process in a controlled manner. Evaluations under our proposed framework suggest RS delivers better protection against adversarial examples than many existing schemes.
对抗实例防御的随机峰值和系统评估
图像分类器经常受到对抗样本的影响,这是通过在输入图像中添加少量噪声来欺骗分类器进行错误分类而产生的。多年来,人们提出了许多防御机制,不同的研究人员对其有效性提出了看似矛盾的说法。我们提出了一个可能的对抗模型的分析,并提出了一个评估框架来比较不同的防御机制。作为框架的一部分,我们引入了一个更强大、更现实的对手策略。此外,我们提出了一种新的防御机制,称为随机spike (RS),该机制泛化dropout并以可控的方式在训练过程中引入随机噪声。在我们提出的框架下的评估表明,RS比许多现有方案提供了更好的对抗性示例保护。
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