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Optimal Reversible Data Hiding Scheme Based on Multiple Histograms Modification

机译:基于多直方图修改的最佳可逆数据隐藏方案

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摘要

Recently, a method based on multiple histograms modification (MHM) is proposed for reversible data hiding (RDH), in which a sequence of prediction-error histograms are generated and two expansion bins are selected in each histogram for expansion embedding. However, although efficient, it only chooses a single pair of expansion bins which limits the embedding capacity. On the other hand, the exhaustive expansion-bin-selection procedure in MHM takes huge computation time, so that it cannot be extended for high capacity RDH. In order to overcome the aforementioned drawbacks, an optimal RDH scheme based on MHM for high capacity embedding is proposed in this paper. First, to improve the embedding capacity, instead of a single pair of expansion bins, multiple pairs of expansion bins are utilized for each histogram, and the multiple-expansion-bin-selection for optimal embedding is formulated as an optimization problem. Then, unlike the exhaustive searching way used in MHM, a computationally efficient algorithm is proposed to solve the optimization problem, so that the optimal expansion bins can be adaptively determined to optimize the embedding performance. By the proposed approach, high embedding capacity can be achieved with good marked image quality, and the experimental results show that it is better than the original MHM and some other state-of-the-art methods.
机译:最近,提出了一种基于多直方图修改(MHM)的方法,用于可逆数据隐藏(RDH),其中生成了一系列预测误差直方图,并且在每个直方图中选择两个扩展箱以进行扩展嵌入。但是,虽然有效,但它仅选择一对扩展箱,这限制了嵌入容量。另一方面,MHM中的详尽扩展-Bin选择过程采用巨大的计算时间,以便为高容量RDH扩展。为了克服上述缺点,本文提出了一种基于MHM的最佳RDH方案,以便在本文中提出了高容量嵌入。首先,为了改善嵌入容量,而不是单对扩展箱,针对每个直方图使用多对扩展箱,并且将多扩展-bin选择用于最佳嵌入的选择作为优化问题。然后,与MHM中使用的详尽搜索方式不同,提出了一种计算高效的算法来解决优化问题,从而可以自适应地确定最佳扩展箱以优化嵌入性能。通过所提出的方法,可以通过良好的显着图像质量实现高嵌入能力,实验结果表明它比原版MHM和其他一些最先进的方法更好。

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