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arxiv: 1811.01443 · v2 · pith:53XIKYPQnew · submitted 2018-11-04 · 💻 cs.LG · cs.CR· stat.ML

SSCNets: Robustifying DNNs using Secure Selective Convolutional Filters

classification 💻 cs.LG cs.CRstat.ML
keywords convolutionaldnnssecureselectivetechniqueaddingadversarialallowing
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In this paper, we introduce a novel technique based on the Secure Selective Convolutional (SSC) techniques in the training loop that increases the robustness of a given DNN by allowing it to learn the data distribution based on the important edges in the input image. We validate our technique on Convolutional DNNs against the state-of-the-art attacks from the open-source Cleverhans library using the MNIST, the CIFAR-10, and the CIFAR-100 datasets. Our experimental results show that the attack success rate, as well as the imperceptibility of the adversarial images, can be significantly reduced by adding effective pre-processing functions, i.e., Sobel filtering.

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