Exploring Adversarial Attacks and Defenses in Vision Transformers trained with DINO

06/14/2022
by   Javier Rando, et al.
0

This work conducts the first analysis on the robustness against adversarial attacks on self-supervised Vision Transformers trained using DINO. First, we evaluate whether features learned through self-supervision are more robust to adversarial attacks than those emerging from supervised learning. Then, we present properties arising for attacks in the latent space. Finally, we evaluate whether three well-known defense strategies can increase adversarial robustness in downstream tasks by only fine-tuning the classification head to provide robustness even in view of limited compute resources. These defense strategies are: Adversarial Training, Ensemble Adversarial Training and Ensemble of Specialized Networks.

READ FULL TEXT
research
11/15/2019

Self-supervised Adversarial Training

Recent work has demonstrated that neural networks are vulnerable to adve...
research
06/18/2020

Dissecting Deep Networks into an Ensemble of Generative Classifiers for Robust Predictions

Deep Neural Networks (DNNs) are often criticized for being susceptible t...
research
02/19/2020

AdvMS: A Multi-source Multi-cost Defense Against Adversarial Attacks

Designing effective defense against adversarial attacks is a crucial top...
research
10/07/2021

Improving Adversarial Robustness for Free with Snapshot Ensemble

Adversarial training, as one of the few certified defenses against adver...
research
06/08/2020

A Self-supervised Approach for Adversarial Robustness

Adversarial examples can cause catastrophic mistakes in Deep Neural Netw...
research
08/01/2022

Understanding Adversarial Robustness of Vision Transformers via Cauchy Problem

Recent research on the robustness of deep learning has shown that Vision...
research
07/24/2019

Defense Against Adversarial Attacks Using Feature Scattering-based Adversarial Training

We introduce a feature scattering-based adversarial training approach fo...

Please sign up or login with your details

Forgot password? Click here to reset