Reversible data hiding based on improved rhombus predictor and prediction error expansion

Xin Tang, Linna Zhou, Dan Liu, Boyu Liu, Xin-yi Lü
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引用次数: 3

Abstract

Rhombus predictor is an effective technique to achieve prediction error expansion based reversible data hiding. Considering the correlation of adjacent pixels, it achieves high performance prediction of the central pixel with the help of its surrounding four pixels in a rhombus cell. However, for cells with large fluctuation, such correlation is rather weak, leading to poor accuracy of prediction. In this paper, we propose a reversible data hiding scheme based on improved rhombus predictor, which takes the lead to consider consistencies along horizontal, vertical and diagonal directions of the rhombus cell simultaneously so that pixels with higher consistency are employed together to make up the predictor. To reduce the prediction error once watermark bits are not fully embedded, we further present a corresponding fluctuation based sorting strategy. The experimental results show that, with the same amount of watermark bits embedded, the proposed scheme is able to achieve better performance comparing with the classic scheme and the state-of-the art.
基于改进菱形预测器和预测误差扩展的可逆数据隐藏
菱形预测器是实现基于可逆数据隐藏的预测误差扩展的有效技术。考虑到相邻像素之间的相关性,该算法利用菱形单元中中心像素周围的4个像素,实现了对中心像素的高性能预测。但对于波动较大的细胞,这种相关性较弱,导致预测精度较差。本文提出了一种基于改进的菱形预测器的可逆数据隐藏方案,该方案首先同时考虑了菱形单元在水平、垂直和对角线方向上的一致性,从而将一致性较高的像素一起组成预测器。为了降低水印位未完全嵌入时的预测误差,我们进一步提出了相应的基于波动的排序策略。实验结果表明,在嵌入水印比特数相同的情况下,该方案比经典方案和现有方案具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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