Hiding Message Using a Cycle Generative Adversarial Network


연구 분야: Strategies



학회: ACM Transactions on Multimedia Computing, Communications and Applications, Volume 18, Issue 3s


초록

Training an image steganography is an unsupervised problem, because it is impossible to obtain an ideal supervised steganographic image corresponding to the cover image and secret message. Inspired by the success of cycle generative adversarial networks in unsupervised tasks such as style transfer, this article proposes to use a cycle generative adversarial network to solve the problem of unsupervised image steganography. Specifically, this article jointly trains five networks, i.e., a steganographic network, an inverse steganographic network, a hidden message reconstruction network, and two discriminative networks, which together constitute a hidden message cycle generative adversarial network (HCGAN). Compared with the recent image steganography based on generative adversative network, HCGAN provides more accurate supervised information, which makes the training process of HCGAN converge faster and the performance of the trained image steganography network is better. In addition, this article introduces an image steganographic network based on residual learning and shows that residual learning can effectively improve the performance of steganography. Furthermore, to the best of our knowledge, we are the first to propose an inverse steganographic network for eliminating steganographic message from steganographic images, which can be used to avoid steganographic message being discovered or acquired by a third party. The experimental results show that compared with the steganography based on generative adversarial network, the proposed HCGAN has a higher correct decoding rate, better visual quality of steganographic image, and higher secrecy.


Author Profile
Wuzhen Shi

College of Electronics and Information Engineering Guangdong Province Engineering Laboratory for Digital Creative Technology Guangdong-Hong Kong Joint Laboratory for Big Data Imaging and Communication Shenzhen Key Laboratory of Digital Creative Technology Shenzhen University Shenzhen Guangdong China

Andorra
Author Profile
Shaohui Liu

School of Computer Science and Technology State Key Laboratory of Communication Content Cognition Harbin Institute of Technology and Peng Cheng Laboratory Harbin China

Andorra

📄 논문 정보

발행 연도 2022년
인용수 7
출판 국가 Andorra
사이트 ACM
좋아요 수 0

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