Analysis of Secure Medical Image Communication with Digital Signature and Reversible Watermarking

U. A, Suresh G. R.
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引用次数: 7

Abstract

Protection of Medical image contents becomes the important issue in computer network security. Digital Watermarking has becomes a promising technique for medical content authentication, it allows to embed relevant information with the image, which provides confidentiality, integrity and authentication by embedding Digital Signature (DS) with the Medical image. In this paper we focus on need for reversible watermarking, Medical Image Compression and security related problems in medical images, it comparing the performances of various lossless watermarking techniques for various medical image modalities like MRI (Magnetic Resonance Imaging), US (Ultrasonic), CT (Computed Tomography), Endoscopic and Angiographic images. Region of Interest (ROI) supporting lossless watermarking systems only considered for discussions. Performance of all lossless watermarking with Digital Signature is analyzed by means of four parameters Capacity Rate, PSNR (Peak Signal to Noise ratio), NPCR (Number of Pixel Change Rate) and Compression Ratio (CR). This Paper also introduces new mechanism for open network security for medical images. This lossless watermarking is responsible for recovering the altered medical image content of the system.
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基于数字签名和可逆水印的医学图像安全通信分析
医学图像内容的保护成为计算机网络安全的重要课题。数字水印技术是一种很有前途的医学内容认证技术,它允许在图像中嵌入相关信息,通过在医学图像中嵌入数字签名(DS)来提供机密性、完整性和认证。本文重点讨论了医学图像中对可逆水印的需求、医学图像压缩和安全相关问题,比较了各种无损水印技术在不同医学图像模式下的性能,如MRI(磁共振成像)、US(超声)、CT(计算机断层扫描)、内窥镜和血管造影图像。支持无损水印系统的感兴趣区域(ROI)仅用于讨论。通过容量率(Capacity Rate)、峰值信噪比(PSNR)、像素数变化率(NPCR)和压缩比(CR)四个参数分析了所有带数字签名的无损水印的性能。本文还介绍了医学图像开放网络安全的新机制。这种无损水印负责恢复系统中改变的医学图像内容。
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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