Guan Zhenyu, Jing Junpeng, Deng Xin, Xu Mai, Jiang Lai, Zhang Zhou, Li Yipeng
IEEE Trans Pattern Anal Mach Intell. 2023 Jan;45(1):372-390. doi: 10.1109/TPAMI.2022.3141725. Epub 2022 Dec 5.
Multiple image hiding aims to hide multiple secret images into a single cover image, and then recover all secret images perfectly. Such high-capacity hiding may easily lead to contour shadows or color distortion, which makes multiple image hiding a very challenging task. In this paper, we propose a novel multiple image hiding framework based on invertible neural network, namely DeepMIH. Specifically, we develop an invertible hiding neural network (IHNN) to innovatively model the image concealing and revealing as its forward and backward processes, making them fully coupled and reversible. The IHNN is highly flexible, which can be cascaded as many times as required to achieve the hiding of multiple images. To enhance the invisibility, we design an importance map (IM) module to guide the current image hiding based on the previous image hiding results. In addition, we find that the image hidden in the high-frequency sub-bands tends to achieve better hiding performance, and thus propose a low-frequency wavelet loss to constrain that no secret information is hidden in the low-frequency sub-bands. Experimental results show that our DeepMIH significantly outperforms other state-of-the-art methods, in terms of hiding invisibility, security and recovery accuracy on a variety of datasets.
多图像隐藏旨在将多个秘密图像隐藏到单个载体图像中,然后完美地恢复所有秘密图像。这种高容量隐藏很容易导致轮廓阴影或颜色失真,这使得多图像隐藏成为一项极具挑战性的任务。在本文中,我们提出了一种基于可逆神经网络的新型多图像隐藏框架,即深度多图像隐藏(DeepMIH)。具体而言,我们开发了一种可逆隐藏神经网络(IHNN),以创新地将图像隐藏和揭示建模为其前向和后向过程,使它们完全耦合且可逆。IHNN具有高度的灵活性,可以根据需要级联多次以实现多图像的隐藏。为了增强不可见性,我们设计了一个重要性映射(IM)模块,以基于先前的图像隐藏结果来指导当前图像的隐藏。此外,我们发现隐藏在高频子带中的图像往往能获得更好的隐藏性能,因此提出了一种低频小波损失来约束低频子带中不隐藏秘密信息。实验结果表明,在各种数据集上,我们的DeepMIH在隐藏不可见性、安全性和恢复准确性方面显著优于其他现有方法。