论文标题

关于可逆隐身的可预测性

On the predictability in reversible steganography

论文作者

Chang, Ching-Chun, Wang, Xu, Chen, Sisheng, Kiya, Hitoshi, Echizen, Isao

论文摘要

人工神经网络已提高了可逆隐身的前沿。神经网络的核心强度是能够为令人困惑的各种数据提供准确的预测。剩余调制被认为是用于数字图像的最先进的可逆隐身算法。该算法的枢轴是预测分析,在这些分析中,鉴于某些像素的上下文信息,可以预测像素强度。可以将此任务视为低级视觉问题,因此可以部署用于解决类似问题类别的神经网络。除了先前的艺术外,本文还根据受监督和无监督的学习框架研究了像素强度的可预测性。可预测性分析可实现自适应数据嵌入,这又导致容量和不可识别性之间的折衷更好。尽管常规方法通过局部图像模式的统计数据估算可预测性,但基于学习的框架进一步考虑了指定预测指标可以做出正确预测的程度。不仅应考虑图像模式,还应考虑使用的预测指标。实验结果表明,通过将基于学习的可预测性分析仪纳入可逆的隐志系统中,可以显着改善地理性能。

Artificial neural networks have advanced the frontiers of reversible steganography. The core strength of neural networks is the ability to render accurate predictions for a bewildering variety of data. Residual modulation is recognised as the most advanced reversible steganographic algorithm for digital images. The pivot of this algorithm is predictive analytics in which pixel intensities are predicted given some pixel-wise contextual information. This task can be perceived as a low-level vision problem and hence neural networks for addressing a similar class of problems can be deployed. On top of the prior art, this paper investigates predictability of pixel intensities based on supervised and unsupervised learning frameworks. Predictability analysis enables adaptive data embedding, which in turn leads to a better trade-off between capacity and imperceptibility. While conventional methods estimate predictability by the statistics of local image patterns, learning-based frameworks consider further the degree to which correct predictions can be made by a designated predictor. Not only should the image patterns be taken into account but also the predictor in use. Experimental results show that steganographic performance can be significantly improved by incorporating the learning-based predictability analysers into a reversible steganographic system.

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