On the susceptibility of deep neural networks to natural perturbations Conference

Ozdag, M, Raj, S, Fernandes, S et al. (2019). On the susceptibility of deep neural networks to natural perturbations . 2419

cited authors

  • Ozdag, M; Raj, S; Fernandes, S; Velasquez, A; Pullum, LL; Jha, SK

abstract

  • Deep learning systems are increasingly being adopted for safety critical tasks such as autonomous driving. These systems can be exposed to adverse weather conditions such as fog, rain and snow. Vulnerability of deep learning systems to synthetic adversarial attacks has been extensively studied and demonstrated, but the impact of natural weather conditions on these systems has not been studied in detail. In this paper, we study the effects of fog on classification accuracy of the popular Inception deep learning model. We use stereo images from the Cityscapes dataset and computer graphics techniques to mimic realistic naturally occurring fog. We show that the Inception deep learning model is vulnerable to the addition of fog in images.

publication date

  • January 1, 2019

volume

  • 2419