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Code-Bridged Classifier (CBC): A Low or Negative Overhead Defense for Making a CNN Classifier Robust Against Adversarial Attacks

机译:代码桥接分类器(CBC):一种低或负开销防御措施,用于使CNN分类器对付对抗攻击具有鲁棒性

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In this paper, we propose Code-Bridged Classifier (CBC), a framework for making a Convolutional Neural Network (CNNs) robust against adversarial attacks without increasing or even by decreasing the overall models' computational complexity. More specifically, we propose a stacked encoder-convolutional model, in which the input image is first encoded by the encoder module of a denoising auto-encoder, and then the resulting latent representation (without being decoded) is fed to a reduced complexity CNN for image classification. We illustrate that this network not only is more robust to adversarial examples but also has a significantly lower computational complexity when compared to the prior art defenses.
机译:在本文中,我们提出了代码桥接分类器(CBC),一种使卷积神经网络(CNN)抵御对抗攻击而不会增加甚至降低整体模型的计算复杂性的框架。更具体地说,我们提出了一种堆叠式编码器-卷积模型,其中输入图像首先由降噪自动编码器的编码器模块编码,然后将所得的潜在表示(不进行解码)馈送给降低复杂度的CNN,用于图像分类。我们说明,与现有技术的防御相比,该网络不仅对对抗性示例更鲁棒,而且计算复杂度也大大降低。

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