Unrestricted Adversarial Attacks for Semantic Segmentation

10/06/2019
by   Guangyu Shen, et al.
23

Semantic segmentation is one of the most impactful applications of machine learning; however, their robustness under adversarial attack is not well studied. In this paper, we focus on generating unrestricted adversarial examples for semantic segmentation models. We demonstrate a simple yet effective method to generate unrestricted adversarial examples using conditional generative adversarial networks (CGAN) without any hand-crafted metric. The naïve implementation of CGAN, however, yields inferior image quality and low attack success rate. Instead, we leverage the SPADE (Spatially-adaptive denormalization) structure with an additional loss item, which is able to generate effective adversarial attacks in a single step. We validate our approach on the well studied Cityscapes and ADE20K datasets, and demonstrate that our synthetic adversarial examples are not only realistic, but also improve the attack success rate by up to 41.0% compared with the state of the art adversarial attack methods including PGD attack.

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