Adaptive multi-predictor based reversible data hiding with superpixel irregular block sorting and optimization

Hui Shi, Baoyue Hu, Yanli Li, Jianing Geng, Yonggong Ren
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Abstract

ABSTRACT Reversible data hiding (RDH) is a special class of steganography that is capable of recovering the original cover image upon the extraction of the secret data. The main goal of this paper is to develop different adaptive predictors based on superpixel irregular block sorting. Firstly, a superpixel irregular block and sorting strategy is proposed which is applied to histogram shifting for the first time. Then, a multi-directional edge classification method is proposed, which divides pixels into strong edge pixels, normal edge pixels, and weak edge pixels. Moreover, strong edge pixels and normal edge pixels are further divided into four directions. According to edge classification, the most appropriate adaptive multi-predictor is proposed. Finally, an optimization-based data hiding strategy is proposed. The proposed scheme focuses on constructing a sharp enough histogram. The investigational results demonstrate that the proposed scheme achieves large capacity, high image quality, and low complexity.
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基于超像素不规则块排序和优化的自适应多预测器可逆数据隐藏
可逆数据隐藏(RDH)是一种特殊的隐写技术,能够在提取秘密数据后恢复原始封面图像。本文的主要目标是开发基于超像素不规则块排序的不同自适应预测器。首先,提出了一种超像素不规则分块和排序策略,并首次应用于直方图移位;然后,提出了一种多向边缘分类方法,将像素分为强边缘像素、正常边缘像素和弱边缘像素。并将强边缘像素和法向边缘像素进一步划分为四个方向。根据边缘分类,提出了最合适的自适应多预测器。最后提出了一种基于优化的数据隐藏策略。该方案的重点是构建一个足够清晰的直方图。实验结果表明,该方案具有容量大、图像质量高、复杂度低等优点。
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