Alleviating adversarial attacks via convolutional autoencoder

Wenjun Bai, Changqin Quan, Zhiwei Luo
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引用次数: 15

Abstract

In order to defend adversarial attacks in computer vision models, the conventional approach arises on actively incorporate such samples into the training datasets. Nonetheless, the manual production of adversarial samples is painful and labor intensive. Here we propose a novel generative model: Convolutional Autoencoder Model to add unsupervised adversarial training, i.e., the production of adversarial images from the encoded feature representation, on conventional supervised convolutional neural network training. To accomplish such objective, we first provide a novel statistical understanding of convolutional neural network to translate convolution and pooling computations equivalently as a hierarchy of encoders, and sampling tricks, respectively. Then, we derive our proposed Convolutional Autoencoder Model with the ‘adversarial decoders’ to automate the generation of adversarial samples. We validated our proposed Convolutional Autoencoder Model on MNIST dataset, and achieved the clear-cut performance improvement over the normal Convolutional Neural Network.
通过卷积自编码器减轻对抗性攻击
为了防御计算机视觉模型中的对抗性攻击,传统的方法是将这些样本积极地纳入训练数据集中。尽管如此,手工制作对抗性样品是痛苦和劳动密集型的。在这里,我们提出了一种新的生成模型:卷积自编码器模型(Convolutional Autoencoder model),在传统的有监督卷积神经网络训练上增加无监督对抗训练,即从编码的特征表示中产生对抗图像。为了实现这一目标,我们首先对卷积神经网络提供了一种新的统计理解,将卷积和池化计算等效地分别转换为编码器和采样技巧的层次结构。然后,我们用“对抗性解码器”推导出我们提出的卷积自编码器模型,以自动生成对抗性样本。我们在MNIST数据集上验证了我们提出的卷积自编码器模型,并取得了明显优于普通卷积神经网络的性能提升。
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