Our team's code for the NIPS2018 vision adversarial robustness competition - model track. (Team Wilson, 2nd place) slide
Training codes are under train
branch, some training configuration files are under cfgs/
.
Local/docker evaluation codes are under master
branch.
Our final submission (foolbox model-zoo compatible) is in https://github.com/walkerning/nips18comp_submission
Training
- Gaussian/Salt-and-Pepper noises
- Distill Adversarial Training/High level guidance (not useful in the query-based attack threat model)
- Mutual Adversarial Training
- Early-stop blackbox adversarial examples
- Gray-box adversarial training (we do not find this help)
Inference
- Model Ensemble
- Multi-crop/scale forward (do not help as the attacker can query many times)