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首页> 外文期刊>Journal of visual communication & image representation >Adaptive smoothness evaluation and multiple asymmetric histogram modification for reversible data hiding
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Adaptive smoothness evaluation and multiple asymmetric histogram modification for reversible data hiding

机译:自适应平滑度评估和多重非对称直方图修改,实现可逆数据隐藏

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摘要

In this paper, an adaptive reversible data hiding (RDH) algorithm based on multiple asymmetric histograms is proposed by making full use of the image content. Different from existing multiple prediction error histogram (PEHs) modification methods that directly cluster all the pixels of a cover image into multiple categories, we firstly utilize a smoothness threshold to exclude as many pixels in complex regions as possible for reducing unnecessary pixel shifting, and then exploit fuzzy C-means with multiple deliberately-designed features to construct multiple sharply-distributed categories, which helps in increasing the subsequent embedding performance. Two asymmetric PEHs for each class are generated using a pair of asymmetric predictors, and the short part of each asymmetric PEH is modified to reduce the number of invalid modifications. The improved discrete particle swarm optimization is used to adaptively select the best bin while reducing computational complexity. The experimental results show that the proposed method outperforms several state-of-the-art RDH methods.
机译:该文利用图像内容,提出了一种基于多个非对称直方图的自适应可逆数据隐藏(RDH)算法。与现有的将封面图像的所有像素直接聚类为多个类别的多预测误差直方图(PEHs)修改方法不同,我们首先利用平滑度阈值在复杂区域中排除尽可能多的像素,以减少不必要的像素偏移,然后利用具有多个精心设计特征的模糊C-means来构建多个清晰分布的类别, 这有助于提高后续的嵌入性能。使用一对非对称预测变量为每个类生成两个非对称 PEH,并修改每个非对称 PEH 的短部分以减少无效修改的数量。改进的离散粒子群优化用于自适应地选择最佳箱,同时降低计算复杂性。实验结果表明,所提方法优于几种最先进的RDH方法。

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