利用方差预测改进基于直方图的可逆信息隐藏,提高图像质量

C. Weng, Cheng-Hsing Yang, Chun-I Fan, Kuan-Liang Liu, Hung-Min Sun
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引用次数: 2

摘要

基于预测的可逆数据隐藏是一种很好的将信息位隐藏到低失真的数字图像中的技术。为了提高隐写图像的质量,提出了一种基于交错预测和局部复杂度的可逆数据隐藏方法。使用阈值和局部复杂度来确定哪些预测错误应该加入像素移动或消息隐藏组。如果局部复杂度小于阈值,则采用预测误差进行消息隐藏或像素移动,如果局部复杂度大于阈值,则预测误差退出数据隐藏和像素移动过程。因此,更多的像素将避免执行像素移位过程,从而使图像具有更低的失真。实验结果表明,在相同载荷下,我们的图像质量优于其他方法。
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Histogram-Based Reversible Information Hiding Improved by Prediction with the Variance to Enhance Image Quality
Reversible data hiding based on prediction-based is a good technique that can hide message bits into digital images with low distortion. In this paper, we propose a reversible data hiding method based on interleaving prediction and local complexity for enhancing stego-image quality. The thresholds and local complexity are used to determine which predicted error should join the group of pixel shifting or message concealing. If the local complexity is smaller than thresholds, the predicted error will be taken for message hiding or pixel shifting, otherwise, if the local complexity is larger than thresholds, the predicted error will quit joining the process of data concealing and pixel shifting. Therefore, more pixels will avoid executing the process of pixel shifting, resulting to images with lower distortion. The experimental results show that our image quality is superior to other approaches at the same payload.
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