# Unrestricted Adversarial Challenge This is a submission for the unrestricted adversarial challenge: Phase I. The entry is uses a pretrained ImageNet model with Local Linearity Regularizer, then adversarially trained using birds-or-bicycles dataset (train and extras) as provided by the challenge. > Tom B. Brown et al *Unrestricted Adversarial Examples*. [\[arXiv\]](https://arxiv.org/pdf/1809.08352). > Chongli Qin et al *Adversarial Robustness through Local Linearization*. NEURIPS 2019. [\[arXiv\]](https://arxiv.org/abs/1907.02610) ## Contents The code contains: - a main file (`main.py`) for our submission. ## Running Install requirements please follow instructions on [Unrestricted Adversarial Challenge.](https://github.com/google/unrestricted-adversarial-examples/blob/master/warmup.md) You can do this by running: ./unrestricted_advx/install_dependencies.sh You can run the main script by: ./unrestricted_advx/run.sh