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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >An improved reversible watermarking scheme using weighted prediction and watermarking simulation
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An improved reversible watermarking scheme using weighted prediction and watermarking simulation

机译:一种改进的可逆水印方案,使用加权预测和水印模拟

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摘要

For the reversible watermarking scheme using the prediction error expansion and histogram shifting (PEE-HS), improving the prediction accuracy facilitates performance enhancement, which still remains a challenging problem in this field. To this end, the paper improves the state-of-the-art local predictor (LP) by designing the following approaches: 1) enlarging the prediction context; 2) partitioning the prediction block surrounding the target pixel into the watermarked and original regions, and imposing different weights on prediction values from these two regions to generate the final prediction for the target pixel; and 3) conducting watermarking simulation on the original region via random noises to further enhance the prediction performance. These three approaches are then integrated to result in an improved LP using weighted prediction and watermarking simulation (LP-WPWS). By exploiting the LP-WPWS for prediction error generation, we thus construct a new PEE-HS-based reversible watermarking scheme. Extensive simulation shows that the proposed scheme outperforms the state-of-the-art LP and is comparable to the excellent methods exploiting the sorting, multiple histograms modification, and hybrid dimensional histogram generation with adaptive mapping selection.
机译:对于使用预测误差扩展和直方图转移(PEE-HS)的可逆水印方案,提高预测精度有助于性能增强,这仍然是该领域的具有挑战性的问题。为此,本文通过设计以下方法来改善最先进的本地预测因子(LP):1)放大预测上下文; 2)将目标像素围绕到水印和原始区域的预测块分区,并对来自这两个区域的预测值施加不同权重,以产生目标像素的最终预测; 3)通过随机噪声在原始区域进行水印模拟,以进一步增强预测性能。然后将这三种方法集成到使用加权预测和水印模拟(LP-WPW)来导致改进的LP。通过利用用于预测误差生成的LP-WPW,因此我们构建了一种基于PEE-HS的可逆水印方案。广泛的模拟表明,所提出的方案优于最先进的LP,并且与利用具有自适应映射选择的分类,多个直方图修改和混合尺寸直方图生成的优异方法相当。

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