Dynamic Reversible Data Hiding for Edge Contrast Enhancement of Medical Image

Xiyuan Jiang, Zihan Tang, Bo Ou, Jianqin Xiong
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Abstract

Reversible data hiding (RDH) for medical image contrast enhancement is designed to effectively improve the quality of medical images to help doctors make correct diagnosis, while addressing issues of privacy protection and image content integrity. In this paper, we propose a new RDH method for medical image contrast enhancement. To enhance the edge contour of medical image, we employ the superpixel segmentation to identify region of interest (ROI), and then improve the region contrast to facilitate the diagnosis. A new histogram modification is proposed to achieve a local histogram equalization effect. Two adjacent bins with the largest difference in number are selected for expansion, in order to spread the histogram evenly as much as possible. In addition, the histogram modification is adaptive to the expansion bins by using the multiple modification manner, and can spread out the highly populated bins more evenly. Experimental results verify that, compared with the existing typical methods, the proposed method can better improve the medical image quality after data embedding in terms of contrast.
医学图像边缘对比度增强的动态可逆数据隐藏
医学图像对比度增强的可逆数据隐藏(RDH)技术旨在有效提高医学图像质量,帮助医生做出正确诊断,同时解决隐私保护和图像内容完整性问题。本文提出了一种用于医学图像对比度增强的RDH方法。为了增强医学图像的边缘轮廓,我们采用超像素分割来识别感兴趣区域(ROI),然后提高区域对比度以方便诊断。提出了一种新的直方图修改方法来实现局部直方图均衡化效果。选择相邻的两个数量差异最大的箱子进行展开,尽可能均匀地展开直方图。此外,直方图修改采用多重修改的方式适应扩展箱,可以更均匀地展开高填充箱。实验结果证明,与现有的典型方法相比,本文方法在对比度方面能更好地提高数据嵌入后的医学图像质量。
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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