A reversible data hiding based on adaptive prediction technique and histogram shifting

R. Liu, R. Ni, Yao Zhao
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引用次数: 2

Abstract

Reversible data hiding recovers the original image from the stego-image without distortion after data extraction. In this paper, we propose a novel reversible data hiding method based on adaptive prediction techniques and histogram shifting. Because most natural images always contain edges, it is not suitable to predict these pixels using existing prediction methods. For more precise prediction, two prediction methods are adaptively used to calculate prediction error according to the characteristic of a pixel. As a result, two prediction error histograms are built. One is for pixels located at edges, and the other is for the rest pixels. Data are embedded in the image by using histogram shifting method. In addition, a new sorting method is applied to histogram shifting, which considers the differences of all pixel pairs in the neighborhood and better reflects the correlation among pixels. Through the sorting method, the prediction errors with small absolute values are arranged in the front and more embeddable pixels are preferentially processed. Therefore, the number of shifting pixels is decreased if the peaks in the histograms are all dealt with or the capacity is satisfied, which is beneficial to distortion reduction. Experimental results demonstrate that the proposed method acquires greater capacity and higher quality compared with other state-of-the-art schemes.
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基于自适应预测技术和直方图移位的可逆数据隐藏
可逆数据隐藏是在数据提取后不失真地从隐写图像中恢复原始图像。本文提出了一种基于自适应预测技术和直方图移位的可逆数据隐藏方法。由于大多数自然图像总是包含边缘,使用现有的预测方法不适合预测这些像素。为了提高预测精度,根据像素的特性,采用两种预测方法自适应计算预测误差。结果,建立了两个预测误差直方图。一个用于位于边缘的像素,另一个用于其余像素。采用直方图移位法将数据嵌入到图像中。此外,在直方图移位中应用了一种新的排序方法,该方法考虑了邻域内所有像素对的差异,更好地反映了像素间的相关性。通过排序方法,将绝对值较小的预测误差排在前面,优先处理可嵌入像素较多的预测误差。因此,如果对直方图中的峰值全部处理或容量满足,则可以减少移位像素的数量,有利于减少失真。实验结果表明,与其他先进的方法相比,该方法具有更大的容量和更高的质量。
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