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 17761800 of 1808 papers

TitleStatusHype
Vulnerability of Deep Learning0
Defending against Adversarial Attack towards Deep Neural Networks via Collaborative Multi-task Training0
ASP:A Fast Adversarial Attack Example Generation Framework based on Adversarial Saliency Prediction0
Security Analysis and Enhancement of Model Compressed Deep Learning Systems under Adversarial Attacks0
Blind Pre-Processing: A Robust Defense Method Against Adversarial Examples0
Obfuscated Gradients Give a False Sense of Security: Circumventing Defenses to Adversarial ExamplesCode0
Certified Defenses against Adversarial ExamplesCode0
Deflecting Adversarial Attacks with Pixel DeflectionCode0
Query-Efficient Black-box Adversarial Examples (superceded)Code0
Defense against Adversarial Attacks Using High-Level Representation Guided DenoiserCode0
Model Extraction Warning in MLaaS Paradigm0
Linear system security -- detection and correction of adversarial attacks in the noise-free case0
Provable defenses against adversarial examples via the convex outer adversarial polytopeCode0
Generating Natural Adversarial ExamplesCode0
Boosting Adversarial Attacks with MomentumCode0
Standard detectors aren't (currently) fooled by physical adversarial stop signs0
Resilient Learning-Based Control for Synchronization of Passive Multi-Agent Systems under Attack0
EAD: Elastic-Net Attacks to Deep Neural Networks via Adversarial ExamplesCode0
ZOO: Zeroth Order Optimization based Black-box Attacks to Deep Neural Networks without Training Substitute ModelsCode0
Class-based Prediction Errors to Detect Hate Speech with Out-of-vocabulary Words0
Adversarial-Playground: A Visualization Suite Showing How Adversarial Examples Fool Deep LearningCode0
Adversarial and Clean Data Are Not TwinsCode0
Biologically inspired protection of deep networks from adversarial attacks0
Tactics of Adversarial Attack on Deep Reinforcement Learning Agents0
On Detecting Adversarial PerturbationsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Xu et al.Attack: PGD2078.68Unverified
23-ensemble of multi-resolution self-ensemblesAttack: AutoAttack78.13Unverified
3TRADES-ANCRA/ResNet18Attack: AutoAttack59.7Unverified
4AdvTraining [madry2018]Attack: PGD2048.44Unverified
5TRADES [zhang2019b]Attack: PGD2045.9Unverified
6XU-NetRobust Accuracy1Unverified
#ModelMetricClaimedVerifiedStatus
13-ensemble of multi-resolution self-ensemblesAttack: AutoAttack51.28Unverified
2multi-resolution self-ensemblesAttack: AutoAttack47.85Unverified