Steganography usually modifies cover media to embed secret data. A new steganographic approach called generative steganography (GS) has emerged recently, in which stego images (images containing secret data) are generated from secret data directly without cover media. However, existing GS schemes are often criticized for their poor performances. In this paper, we propose an advanced generative steganography network (GSN) that can generate realistic stego images without using cover images. We firstly introduce the mutual information mechanism in GS, which helps to achieve high secret extraction accuracy. Our model contains four sub-networks, i.e., an image generator ($G$), a discriminator ($D$), a steganalyzer ($S$), and a data extractor ($E$). $D$ and $S$ act as two adversarial discriminators to ensure the visual quality and security of generated stego images. $E$ is to extract the hidden secret from generated stego images. The generator $G$ is flexibly constructed to synthesize either cover or stego images with different inputs. It facilitates covert communication by concealing the function of generating stego images in a normal generator. A module named secret block is designed to hide secret data in the feature maps during image generation, with which high hiding capacity and image fidelity are achieved. In addition, a novel hierarchical gradient decay (HGD) skill is developed to resist steganalysis detection. Experiments demonstrate the superiority of our work over existing methods.
翻译:素描法通常会改变封面介质以嵌入秘密数据。我们首先在GS中引入共同信息机制,这可以帮助实现高秘密提取精确度。我们的模型包含四个子网络,即:图像生成器(G$)、分析器($D$)、分析器($S$)、数据提取器($E$),然而,现有的GS计划往往因其表现不佳而受到批评。在本文件中,我们提议建立一个先进的基因采集系统网络(GSN),以确保生成的Stego图像的视觉质量和安全性能。我们首先在GS中引入共同信息机制,帮助实现高秘密提取精确度。我们的模型包含四个子网络,即图像生成器(G$$)、分析器($D$)、分析器($D$)、数据提取器($S$S)。在生成的Stego图像生成过程中,将隐藏一个隐藏的隐藏性格图像的隐蔽性能和隐藏性能。