基于快速傅里叶变换和复值神经网络的医学水印图像变化检测

R. F. Olanrewaju, Othman Omran Khalifa, A. Abdulla, A. Khedher
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引用次数: 4

摘要

医学图像包含诊断信息,可用于疾病的早期发现。这些图像是水印,以证明其完整性;不被未经授权的人修改,并确定真实性,即确保图像属于正确的患者,来自正确的来源。然而,目前医学图像水印系统存在的问题是在患者数据/信息嵌入过程中引入失真。这一因素阻碍了适当的检测和治疗。提出了一种基于快速傅里叶变换和复值神经网络(FFT-CVNN)的无失真医学图像水印算法。使用像素和基于感知的度量来评估图像的质量。结果表明,主图像和水印图像在感知上无法区分,篡改检测器能够检测出水印图像中任何形式的伪造或篡改。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of alterations in watermarked medical images using Fast Fourier Transform and Complex-Valued Neural Network
Medical images contain diagnostic information which can be used for early detection of diseases. These images are watermarked in order to proof its integrity; not modified by unauthorized person, and to ascertain the authenticity, that is, ensuring that the image belong to the correct patient and emanates from the correct source. However, the current problem with the watermarking system used for medical images is distortion introduced during the patient data/information embedding. This factor has hindered proper detection and treatment. This paper proposed a distortion free algorithm based on Fast Fourier Transform and Complex Valued Neural Network (FFT-CVNN) that can be used for watermarking medical images. The qualities of the images were evaluated with both pixel and perceptual-based metrics. Results indicate that the host image and the watermarked image were perceptually indistinguishable and the tamper detector was able to detect any form of forgery or tampering in the watermarked image.
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