Liu Lianshan, Tang Li, Zheng Weimin
College of Computer Science and Engineering, Shandong University of Science and Technology, Qingdao 266590, China.
Entropy (Basel). 2022 Dec 1;24(12):1762. doi: 10.3390/e24121762.
Image steganography is a scheme that hides secret information in a cover image without being perceived. Most of the existing steganography methods are more concerned about the visual similarity between the stego image and the cover image, and they ignore the recovery accuracy of secret information. In this paper, the steganography method based on invertible neural networks is proposed, which can generate stego images with high invisibility and security and can achieve lossless recovery for secret information. In addition, this paper introduces a mapping module that can compress information actually embedded to improve the quality of the stego image and its antidetection ability. In order to restore message and prevent loss, the secret information is converted into a binary sequence and then embedded in the cover image through the forward operation of the invertible neural networks. This information will then be recovered from the stego image through the inverse operation of the invertible neural networks. Experimental results show that the proposed method in this paper has achieved competitive results in the visual quality and safety of stego images and achieved 100% accuracy in information extraction.
图像隐写术是一种将秘密信息隐藏在载体图像中而不被察觉的方案。现有的大多数隐写术方法更关注隐秘图像与载体图像之间的视觉相似性,而忽略了秘密信息的恢复准确性。本文提出了一种基于可逆神经网络的隐写术方法,该方法可以生成具有高不可见性和安全性的隐秘图像,并且能够对秘密信息实现无损恢复。此外,本文还引入了一个映射模块,该模块可以对实际嵌入的信息进行压缩,以提高隐秘图像的质量及其抗检测能力。为了恢复消息并防止丢失,秘密信息被转换为二进制序列,然后通过可逆神经网络的前向操作嵌入到载体图像中。然后,这些信息将通过可逆神经网络的反向操作从隐秘图像中恢复出来。实验结果表明,本文提出的方法在隐秘图像的视觉质量和安全性方面取得了具有竞争力的结果,并且在信息提取方面达到了100%的准确率。