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Steganography using a 3 player game

Steganography using a 3 player game

14 July 2019
Mehdi Yedroudj
Frédéric Comby
Marc Chaumont
    GAN
ArXivPDFHTML

Papers citing "Steganography using a 3 player game"

9 / 9 papers shown
Title
Deep Learning in steganography and steganalysis from 2015 to 2018
Deep Learning in steganography and steganalysis from 2015 to 2018
Marc Chaumont
46
48
0
31 Mar 2019
HiDDeN: Hiding Data With Deep Networks
HiDDeN: Hiding Data With Deep Networks
Jiren Zhu
Russell Kaplan
Justin Johnson
Li Fei-Fei
WIGM
52
747
0
26 Jul 2018
Yedrouj-Net: An efficient CNN for spatial steganalysis
Yedrouj-Net: An efficient CNN for spatial steganalysis
Mehdi Yedroudj
Frédéric Comby
Marc Chaumont
71
225
0
26 Feb 2018
How to augment a small learning set for improving the performances of a
  CNN-based steganalyzer?
How to augment a small learning set for improving the performances of a CNN-based steganalyzer?
Mehdi Yedroudj
Marc Chaumont
Frédéric Comby
37
34
0
12 Jan 2018
Unsupervised Steganalysis Based on Artificial Training Sets
Unsupervised Steganalysis Based on Artificial Training Sets
Daniel Lerch-Hostalot
David Megías
32
78
0
02 Mar 2017
Generating Steganographic Images via Adversarial Training
Generating Steganographic Images via Adversarial Training
Jamie Hayes
G. Danezis
AAML
GAN
68
277
0
01 Mar 2017
Learning to Protect Communications with Adversarial Neural Cryptography
Learning to Protect Communications with Adversarial Neural Cryptography
Martín Abadi
David G. Andersen
FedML
GAN
59
213
0
21 Oct 2016
Deep learning is a good steganalysis tool when embedding key is reused
  for different images, even if there is a cover source-mismatch
Deep learning is a good steganalysis tool when embedding key is reused for different images, even if there is a cover source-mismatch
L. Pibre
Pasquet Jérôme
Dino Ienco
Marc Chaumont
44
145
0
16 Nov 2015
U-Net: Convolutional Networks for Biomedical Image Segmentation
U-Net: Convolutional Networks for Biomedical Image Segmentation
Olaf Ronneberger
Philipp Fischer
Thomas Brox
SSeg
3DV
1.8K
77,099
0
18 May 2015
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