基于预测的遗传算法医学图像可逆数据隐藏

Hsiang-Cheh Huang, Ting-Hsuan Wang, Yueh-Hong Chen, J. Hung
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引用次数: 2

摘要

可逆数据隐藏是水印研究中的一个新课题。在编码器上,它依靠对原始图像特征的轻微修改来嵌入秘密信息。在解码器中,原始图像和秘密信息可以从标记图像中分离出来,开销很小。在本文中,我们提出了一种方案,通过预测输出和输入图像之间的差异,使可逆数据隐藏成为可能。通过仔细选择预测系数,并通过遗传算法对预测系数进行优化,在保证输出图像质量的同时,可以观察到嵌入容量的增强。我们将该算法应用于医学图像,以保护患者免受可能发生的人为错误的影响。通过对遗传算法的训练,仿真结果表明,该算法在保持输出图像质量的前提下,增强了嵌入能力。利用遗传算法对预测系数进行优化,得到了较好的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction-Based Reversible Data Hiding for Medical Images with Genetic Algorithms
Reversible data hiding is a newly developed topic in watermarking researches. At the encoder, it relies on slightly modifying the characteristics of original images for embedding secret information. At the decoder, original image and secret information can be separated from marked image with slight amount of overhead. In this paper, we propose the scheme by predicting the difference between output and input images for making reversible data hiding possible. By carefully selecting prediction coefficients, which are optimized by genetic algorithm, the output image quality can be preserved, while the enhanced amount of embedding capacity can be observed. We apply the algorithm to medical images for protecting patients' cases from possible human errors incurred. With the training of genetic algorithm, simulation results with our algorithm have demonstrated the enhanced embedding capacity, while keeping the output image quality. Optimized prediction coefficients with genetic algorithm lead to better performances with our scheme.
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