Spatially Transformed Adversarial Examples
Abstract
Recent studies show that widely used deep neural networks (DNNs) are vulnerable to carefully crafted adversarial examples. Many advanced algorithms have been proposed to generate adversarial examples by leveraging the Lp distance for penalizing perturbations. Researchers have explored different defense methods to defend against such adversarial attacks. While the effectiveness of Lp distance as a metric of perceptual quality remains an active research area, in this paper we will instead focus on a different type of perturbation, namely spatial transformation, as opposed to manipulating the pixel values directly as in prior works. Perturbations generated through spatial transformation could result in large Lp distance measures, but our extensive experiments show that such spatially transformed adversarial examples are perceptually realistic and more difficult to defend against with existing defense systems. This potentially provides a new direction in adversarial example generation and the design of corresponding defenses. We visualize the spatial transformation based perturbation for different examples and show that our technique can produce realistic adversarial examples with smooth image deformation. Finally, we visualize the attention of deep networks with different types of adversarial examples to better understand how these examples are interpreted.
BibTeX
@conference{Xiao-2018-125688,author = {Chaowei Xiao and Jun-Yan Zhu and Bo Li and Warren He and Mingyan Liu and Dawn Song},
title = {Spatially Transformed Adversarial Examples},
booktitle = {Proceedings of (ICLR) International Conference on Learning Representations},
year = {2018},
month = {April},
}