一种新的基于改进U-Net的大容量信息隐藏方案

Lianshan Liu, Lingzhuang Meng, Weimin Zheng, Yanjun Peng, Xiaoli Wang
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引用次数: 2

摘要

随着深度学习逐渐引入到信息隐藏领域,信息隐藏的能力得到了很大的提高。因此,一种具有更高容量和良好视觉效果的解决方案成为当前的研究目标。提出了一种新的基于改进U-Net的大容量信息隐藏方案,将改进U-Net网络与多尺度图像分析相结合,实现了大容量信息隐藏。改进的U-Net结构具有较小的网络规模,可以同时用于信息隐藏和信息提取。在信息隐藏网络中,通过小波变换将秘密图像分解成小波分量,并将小波分量隐藏到图像中。在提取网络中,将隐藏图像的特征提取为四个分量,得到提取的秘密图像。该方案的隐藏网络和提取网络均采用改进的U-Net结构,最大程度地保留了载体图像和秘密图像的细节。仿真实验表明,该方案的容量比传统方案有很大提高,且视觉效果良好。与现有同类解决方案相比,网络规模缩小了近60%,处理速度提高了20%。隐藏信息后的图像效果得到了改善,秘密图像与提取图像的PSNR提高了6.3 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel High-Capacity Information Hiding Scheme Based on Improved U-Net
With the gradual introduction of deep learning into the field of information hiding, the capacity of information hiding has been greatly improved. Therefore, a solution with a higher capacity and a good visual effect had become the current research goal. A novel high-capacity information hiding scheme based on improved U-Net was proposed in this paper, which combined improved U-Net network and multiscale image analysis to carry out high-capacity information hiding. The proposed improved U-Net structure had a smaller network scale and could be used in both information hiding and information extraction. In the information hiding network, the secret image was decomposed into wavelet components through wavelet transform, and the wavelet components were hidden into image. In the extraction network, the features of the hidden image were extracted into four components, and the extracted secret image was obtained. Both the hiding network and the extraction network of this scheme used the improved U-Net structure, which preserved the details of the carrier image and the secret image to the greatest extent. The simulation experiment had shown that the capacity of this scheme was greatly improved than that of the traditional scheme, and the visual effect was good. And compared with the existing similar solution, the network size has been reduced by nearly 60%, and the processing speed has been increased by 20%. The image effect after hiding the information was improved, and the PSNR between the secret image and the extracted image was improved by 6.3 dB.
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