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 16261650 of 1808 papers

TitleStatusHype
Should Adversarial Attacks Use Pixel p-Norm?0
Architecture Selection via the Trade-off Between Accuracy and Robustness0
Enhancing Transformation-based Defenses using a Distribution Classifier0
Improving VAEs' Robustness to Adversarial Attack0
Feature Space Perturbations Yield More Transferable Adversarial ExamplesCode0
Decoupling Direction and Norm for Efficient Gradient-Based L2 Adversarial Attacks and DefensesCode0
ShieldNets: Defending Against Adversarial Attacks Using Probabilistic Adversarial Robustness0
Reverse KL-Divergence Training of Prior Networks: Improved Uncertainty and Adversarial RobustnessCode0
Real-Time Adversarial AttacksCode0
Identifying Classes Susceptible to Adversarial Attacks0
Bandlimiting Neural Networks Against Adversarial Attacks0
Robust Sparse Regularization: Simultaneously Optimizing Neural Network Robustness and Compactness0
Functional Adversarial AttacksCode0
Accelerating Monte Carlo Bayesian Inference via Approximating Predictive Uncertainty over SimplexCode0
Zeroth-Order Stochastic Alternating Direction Method of Multipliers for Nonconvex Nonsmooth Optimization0
High Frequency Component Helps Explain the Generalization of Convolutional Neural NetworksCode1
Scaleable input gradient regularization for adversarial robustnessCode0
Fooling Detection Alone is Not Enough: First Adversarial Attack against Multiple Object TrackingCode1
Thwarting finite difference adversarial attacks with output randomization0
DoPa: A Comprehensive CNN Detection Methodology against Physical Adversarial Attacks0
Taking Care of The Discretization Problem: A Comprehensive Study of the Discretization Problem and A Black-Box Adversarial Attack in Discrete Integer DomainCode0
A critique of the DeepSec Platform for Security Analysis of Deep Learning Models0
Harnessing the Vulnerability of Latent Layers in Adversarially Trained ModelsCode0
Exact Adversarial Attack to Image Captioning via Structured Output Learning with Latent VariablesCode0
Interpreting and Evaluating Neural Network Robustness0
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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