CycleGAN: a Master of Steganography

12/08/2017
by   Casey Chu, et al.
0

CycleGAN is one of the latest successful approaches to learn a correspondence between two image distributions. In a series of experiments, we demonstrate an intriguing property of the model: CycleGAN learns to "hide" information about a source image inside the generated image in nearly imperceptible, high-frequency noise. This trick ensures that the complementary generator can recover the original sample and thus satisfy the cyclic consistency requirement, but the generated image remains realistic. We connect this phenomenon with adversarial attacks by viewing CycleGAN's training procedure as training a generator of adversarial examples, thereby showing that adversarial attacks are not limited to classifiers but also may target generative models.

READ FULL TEXT

page 2

page 3

page 4

research
03/28/2018

The Effects of JPEG and JPEG2000 Compression on Attacks using Adversarial Examples

Adversarial examples are known to have a negative effect on the performa...
research
05/18/2017

Delving into adversarial attacks on deep policies

Adversarial examples have been shown to exist for a variety of deep lear...
research
12/29/2020

Generating Adversarial Examples in Chinese Texts Using Sentence-Pieces

Adversarial attacks in texts are mostly substitution-based methods that ...
research
11/02/2022

Certified Robustness of Quantum Classifiers against Adversarial Examples through Quantum Noise

Recently, quantum classifiers have been known to be vulnerable to advers...
research
07/01/2020

Adversarial Example Games

The existence of adversarial examples capable of fooling trained neural ...
research
06/17/2020

Disrupting Deepfakes with an Adversarial Attack that Survives Training

The rapid progress in generative models and autoencoders has given rise ...
research
02/09/2019

Image Decomposition and Classification through a Generative Model

We demonstrate in this paper that a generative model can be designed to ...

Please sign up or login with your details

Forgot password? Click here to reset