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Adversarial Defense by Stratified Convolutional Sparse Coding

2018-11-30CVPR 2019Code Available0· sign in to hype

Bo Sun, Nian-hsuan Tsai, Fangchen Liu, Ronald Yu, Hao Su

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Abstract

We propose an adversarial defense method that achieves state-of-the-art performance among attack-agnostic adversarial defense methods while also maintaining robustness to input resolution, scale of adversarial perturbation, and scale of dataset size. Based on convolutional sparse coding, we construct a stratified low-dimensional quasi-natural image space that faithfully approximates the natural image space while also removing adversarial perturbations. We introduce a novel Sparse Transformation Layer (STL) in between the input image and the first layer of the neural network to efficiently project images into our quasi-natural image space. Our experiments show state-of-the-art performance of our method compared to other attack-agnostic adversarial defense methods in various adversarial settings.

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