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 551560 of 1808 papers

TitleStatusHype
Autonomous LLM-Enhanced Adversarial Attack for Text-to-Motion0
Securing the Diagnosis of Medical Imaging: An In-depth Analysis of AI-Resistant Attacks0
OTAD: An Optimal Transport-Induced Robust Model for Agnostic Adversarial Attack0
Vulnerabilities in AI-generated Image Detection: The Challenge of Adversarial Attacks0
Physical Adversarial Attack on Monocular Depth Estimation via Shape-Varying Patches0
Beyond Dropout: Robust Convolutional Neural Networks Based on Local Feature Masking0
Cross-Task Attack: A Self-Supervision Generative Framework Based on Attention Shift0
Compressed models are NOT miniature versions of large models0
Any Target Can be Offense: Adversarial Example Generation via Generalized Latent InfectionCode0
AEMIM: Adversarial Examples Meet Masked Image Modeling0
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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