基于拉普拉斯图像锐化对比度增强的可逆数据隐藏

Chen-Kuei Yang, Zhihong Li, Wenxia Cai, S. Weng, Li Liu, Anhong Wang
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引用次数: 1

摘要

2014年,Wu等人提出了一种具有对比度增强的可逆数据隐藏方法(RDH-CE),该方法强调图像的视觉质量比峰值信噪比(PSNR)高更为重要。但这种方法只关注全局增强而忽略了细节。随着嵌入水平的增加,视觉图像的畸变更为明显,嵌入水平较小时,嵌入容量相对较低。因此,本文提出了一种基于拉普拉斯锐化的对比度增强RDH方法。首先,利用拉普拉斯锐化技术突出图像边缘的细节和图像的清晰度,并利用锐化比例因子降低图像的视觉畸变;然后,结合差分展开和数字逆变换,将算子应用于图像中的所有像素,增加了嵌入容量。实验结果证明了该方案的有效性。
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Reversible Data Hiding with Contrast Enhancement Based on Laplacian Image Sharpening
In 2014, Wu et al. proposed a reversible data hiding method with contrast enhancement (RDH-CE) that emphasized that the visual quality of the image was more important than having a high peak signal-to-noise ratio (PSNR). But this method focused only on global enhancements and ignored the details. There were more obvious distortions of the visual image as the embedding level increased, and embedding capacity was relatively low when the embedding level was small. Therefore, in this paper, we proposed a new RDH method with contrast enhancement based on Laplacian sharpening. First, the details of the edges of images and the clarity of images were emphasized by Laplacian sharpening, and the visual distortions of the images were reduced by sharpening scale factor. Then, the embedding capacity was increased by combining the difference expansion and digital inverse transformation to apply the operator to all of the pixels in the image. The experimental results demonstrate the effectiveness of the proposed scheme.
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