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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]. Chongli Qin et al Adversarial Robustness through Local Linearization. NEURIPS 2019. [arXiv]
Contents
The code contains:
- a main file (
main.py) for our submission.
Running
Install requirements please follow instructions on Unrestricted Adversarial Challenge.
You can do this by running:
./unrestricted_advx/install_dependencies.sh
You can run the main script by:
./unrestricted_advx/run.sh