HyperAI

Adversarial Robustness On Cifar 10

Metrics

Accuracy
Attack: AutoAttack

Results

Performance results of various models on this benchmark

Comparison Table
Model NameAccuracyAttack: AutoAttack
global-local-regularization-via84.1349.94
improving-the-accuracy-robustness-trade-off95.2368.06
stochastic-local-winner-takes-all-networks92.2682.6
robust-representation-learning-via-asymmetric81.7059.70
stochastic-local-winner-takes-all-networks91.8881.22