Deeply‐Recursive Attention Network for video steganography

Author:

Cui Jiabao1,Zheng Liangli2,Yu Yunlong3ORCID,Lin Yining4,Ni Huajian4,Xu Xin5,Zhang Zhongfei6

Affiliation:

1. College of Computer Science and Technology Zhejiang University Hangzhou China

2. School of Software Technology Zhejiang University Ningbo China

3. College of Information Science and Electronic Engineering Zhejiang University Hangzhou China

4. Shanghai SUPREMIND Technology Co., Ltd. Shanghai China

5. College of Intelligence Science and Technology National University of Defense Technology Changsha China

6. Department of Computer Science Binghamton University Binghamton New York USA

Abstract

AbstractVideo steganography plays an important role in secret communication that conceals a secret video in a cover video by perturbing the value of pixels in the cover frames. Imperceptibility is the first and foremost requirement of any steganographic approach. Inspired by the fact that human eyes perceive pixel perturbation differently in different video areas, a novel effective and efficient Deeply‐Recursive Attention Network (DRANet) for video steganography to find suitable areas for information hiding via modelling spatio‐temporal attention is proposed. The DRANet mainly contains two important components, a Non‐Local Self‐Attention (NLSA) block and a Non‐Local Co‐Attention (NLCA) block. Specifically, the NLSA block can select the cover frame areas which are suitable for hiding by computing the correlations among inter‐ and intra‐cover frames. The NLCA block aims to effectively produce the enhanced representations of the secret frames to enhance the robustness of the model and alleviate the influence of different areas in the secret video. Furthermore, the DRANet reduces the model parameters by performing similar operations on the different frames within an input video recursively. Experimental results show the proposed DRANet achieves better performance with fewer parameters than the state‐of‐the‐art competitors.

Funder

National Natural Science Foundation of China

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

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