Adversarial Examples Detection and Analysis with Layer-wise Autoencoders

06/17/2020
by   Bartosz Wójcik, et al.
0

We present a mechanism for detecting adversarial examples based on data representations taken from the hidden layers of the target network. For this purpose, we train individual autoencoders at intermediate layers of the target network. This allows us to describe the manifold of true data and, in consequence, decide whether a given example has the same characteristics as true data. It also gives us insight into the behavior of adversarial examples and their flow through the layers of a deep neural network. Experimental results show that our method outperforms the state of the art in supervised and unsupervised settings.

READ FULL TEXT

page 7

page 11

page 12

page 13

page 14

page 16

page 17

page 18

research
05/18/2021

Detecting Adversarial Examples with Bayesian Neural Network

In this paper, we propose a new framework to detect adversarial examples...
research
03/28/2017

Adversarial Transformation Networks: Learning to Generate Adversarial Examples

Multiple different approaches of generating adversarial examples have be...
research
12/08/2018

Detecting Adversarial Examples in Convolutional Neural Networks

The great success of convolutional neural networks has caused a massive ...
research
10/01/2019

Deep Neural Rejection against Adversarial Examples

Despite the impressive performances reported by deep neural networks in ...
research
04/12/2022

Examining the Proximity of Adversarial Examples to Class Manifolds in Deep Networks

Deep neural networks achieve remarkable performance in multiple fields. ...
research
05/26/2019

State-Reification Networks: Improving Generalization by Modeling the Distribution of Hidden Representations

Machine learning promises methods that generalize well from finite label...
research
11/02/2022

LMD: A Learnable Mask Network to Detect Adversarial Examples for Speaker Verification

Although the security of automatic speaker verification (ASV) is serious...

Please sign up or login with your details

Forgot password? Click here to reset