Deep-learning\textendash{centric} reversible steganography has emerged as a promising research paradigm. A direct way of applying deep learning to reversible steganography is to construct a pair of encoder and decoder, whose parameters are trained jointly, thereby learning the steganographic system as a whole. This end-to-end framework, however, falls short of the reversibility requirement because it is difficult for this kind of monolithic system, as a black box, to create or duplicate intricate reversible mechanisms. In response to this issue, a recent approach is to carve up the steganographic system and work on modules independently. In particular, neural networks are deployed in an analytics module to learn the data distribution, while an established mechanism is called upon to handle the remaining tasks. In this paper, we investigate the modular framework and deploy deep neural networks in a reversible steganographic scheme referred to as prediction-error modulation, in which an analytics module serves the purpose of pixel intensity prediction. The primary focus of this study is on deep-learning\textendash{based} context-aware pixel intensity prediction. We address the unsolved issues reported in related literature, including the impact of pixel initialisation on prediction accuracy and the influence of uncertainty propagation in dual-layer embedding. Furthermore, we establish a connection between context-aware pixel intensity prediction and low-level computer vision and analyse the performance of several advanced neural networks.
翻译:深学习/ extendash{ central} 可逆的剖析法已作为一个很有希望的研究范例出现。 将深学运用于可逆的剖析法的直接方法,是建造一对编码器和解码器,其参数经过共同培训,从而学习整个剖析系统。 但是,这个端到端框架没有达到可逆性要求, 因为这种单体系统, 作为一个黑盒, 很难创建或复制复杂的可逆机制。 针对这个问题, 最近的一种方法就是将精密系统与模块分析工作分开。 特别是, 将神经网络安装在一个分析模块中学习数据分布, 同时要求一个固定的机制来处理剩余的任务。 在本文中, 我们调查模块框架, 并在一个可逆的直线图系统中部署深层神经网络, 称为预测- 低导调, 其中一个解析模块用于等离子密度预测, 以及模块分析网络对模块的分析。 本次研究的主要重点是在深度预测中, 我们报告的深度预测的深度预测, 以及 深度预测中的深度预测 。