Authentication of medical images through a hybrid watermarking method based on Hermite-Jigsaw-SVD

Sandra L. Gomez-Coronel, E. Moya-Albor, Karina Ruby Perez-Daniel, J. Brieva, I. Cruz-Aceves, A. Hernandez-Aguirre, J. Soto-Álvarez
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Abstract

This work presents a watermarking algorithm applied to medical images by using the Steered Hermite Transform (SHT), the Singular Value Decomposition (SVD), and the Jigsaw transform (JS). The principal objective is to protect the patient’s information using imperceptible watermarking and preserve its diagnosis. Thus, the watermark imperceptibility is achieved using the high-order Steered Hermite coefficients, whereas the SVD decomposition and the JS ensure the watermark against attacks. We use the medicine symbol Caduceus as a watermark. The metrics employed to evaluate the algorithm’s performance are the Peak Signal-to-Noise Ratio (PSNR), the Mean Structural Similarity Index (MSSIM), and the Normalized Cross-Correlation (NCC). The evaluation metrics over the watermarked image show that it does not suffer quantitative and qualitative changes, and the extracted watermark was recovered successfully with high PSNR values. In addition, several watermark extraction tests were performed against geometric and common processing attacks. These tests show that the proposed algorithm is robust under critical conditions of attacks, for example, against nonlinear smoothing (median filter), high noise addition (Gaussian and Salt & Pepper noise), high compression rates (JPEG compression), rotation between 0 to 180 degree, and translations up to 100 pixels.
基于Hermite-Jigsaw-SVD混合水印方法的医学图像认证
本文提出了一种应用于医学图像的水印算法,该算法采用了导向赫米特变换(SHT)、奇异值分解(SVD)和拼图变换(JS)。其主要目的是利用不可见的水印保护患者信息并保留其诊断结果。因此,使用高阶操纵Hermite系数实现水印的不可感知性,而SVD分解和JS则确保水印不受攻击。我们使用医学符号卡杜修斯作为水印。用于评估算法性能的指标是峰值信噪比(PSNR)、平均结构相似指数(MSSIM)和归一化相互关系(NCC)。对水印图像的评价指标表明,水印图像没有发生量变和质变,提取的水印恢复成功,具有较高的PSNR值。此外,针对几何攻击和普通处理攻击进行了若干水印提取测试。这些测试表明,所提出的算法在攻击的关键条件下具有鲁棒性,例如非线性平滑(中值滤波)、高噪声添加(高斯和盐和胡椒噪声)、高压缩率(JPEG压缩)、0到180度之间的旋转以及高达100像素的平移。
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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