SOTAVerified

Adversarial Attack

An Adversarial Attack is a technique to find a perturbation that changes the prediction of a machine learning model. The perturbation can be very small and imperceptible to human eyes.

Source: Recurrent Attention Model with Log-Polar Mapping is Robust against Adversarial Attacks

Papers

Showing 16011625 of 1808 papers

TitleStatusHype
Investigating Decision Boundaries of Trained Neural Networks0
MetaAdvDet: Towards Robust Detection of Evolving Adversarial AttacksCode0
A principled approach for generating adversarial images under non-smooth dissimilarity metricsCode0
Adversarial Self-Defense for Cycle-Consistent GANsCode0
A Restricted Black-box Adversarial Framework Towards Attacking Graph Embedding ModelsCode0
Exploring the Robustness of NMT Systems to Nonsensical Inputs0
Black-box Adversarial ML Attack on Modulation Classification0
Adversarial Attack on Sentiment Classification0
Nonconvex Zeroth-Order Stochastic ADMM Methods with Lower Function Query Complexity0
On the Design of Black-box Adversarial Examples by Leveraging Gradient-free Optimization and Operator Splitting MethodCode0
Natural Adversarial ExamplesCode1
Affine Disentangled GAN for Interpretable and Robust AV Perception0
Adversarial Attacks in Sound Event Classification0
Minimally distorted Adversarial Examples with a Fast Adaptive Boundary AttackCode0
Generating Natural Language Adversarial Examples through Probability Weighted Word SaliencyCode0
Comment on "Adv-BNN: Improved Adversarial Defense through Robust Bayesian Neural Network"0
The Attack Generator: A Systematic Approach Towards Constructing Adversarial Attacks0
A Computationally Efficient Method for Defending Adversarial Deep Learning Attacks0
Subspace Attack: Exploiting Promising Subspaces for Query-Efficient Black-box AttacksCode0
Mimic and Fool: A Task Agnostic Adversarial AttackCode0
Provably Robust Deep Learning via Adversarially Trained Smoothed ClassifiersCode1
Adversarial Attack Generation Empowered by Min-Max OptimizationCode0
Robustness for Non-Parametric Classification: A Generic Attack and DefenseCode0
Efficient Project Gradient Descent for Ensemble Adversarial AttackCode0
Query-efficient Meta Attack to Deep Neural NetworksCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ResNet20Test Accuracy89.9589.95(1)Community Verified
2Xu et al.Attack: PGD2078.68Unverified
33-ensemble of multi-resolution self-ensemblesAttack: AutoAttack78.13Unverified
4TRADES-ANCRA/ResNet18Attack: AutoAttack59.7Unverified
5AdvTraining [madry2018]Attack: PGD2048.44Unverified
6TRADES [zhang2019b]Attack: PGD2045.9Unverified
7XU-NetRobust Accuracy1Unverified
#ModelMetricClaimedVerifiedStatus
13-ensemble of multi-resolution self-ensemblesAttack: AutoAttack51.28Unverified
2multi-resolution self-ensemblesAttack: AutoAttack47.85Unverified