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A self-embedding technique for tamper detection and localization of medical images for smart-health

机译:篡改篡改篡改检测与智能健康局部局部化技术

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With the prodigious headway of the Internet of Things (IoT), cloud computing, Artificial Intelligence (AI), and big data, smart healthcare is expected to provide potential and competent healthcare services. Smart healthcare is changing the traditional healthcare system by making it more convenient, more expedient, more effective, and more personalized. The rampant health sector data breaches worldwide, however, testify to the need of ensuring the integrity and authenticity of data shared over insecure networks. In this paper, a secure self-embedding fragile watermarking scheme capable of authenticating the medical images and precisely localizing the tampered regions is presented. Two watermarks generated from the cover image called authentication watermark and localization watermark, are used for authentication and localization of the tampered region at the receiver. For watermark generation, the cover image is divided into 4 x 4 non-overlapping blocks. Each block is permuted using chaotic encryption before the watermark generation. The authentication watermark is a function of the 4-Most Significant Bits (MSBs) of each pixel of a block. Deoxyribonucleic Acid (DNA) encoding is used to ensure the security of the authentication watermark before its embedding. The localization watermark utilizes the arithmetic mean of a selected block and the Maximum Pixel Intensity (MPI) in that block. The DNA arithmetic is applied to generate the final authentication of watermark data. The tamper detection and localization results obtained for the proposed work are found to perform better compared to the state-of-art techniques. The proposed algorithm maintains better visual quality despite higher embedding capacity as indicated by an average Peak Signal to Noise (PSNR) value of 51.94 dB for an embedding capacity of 262,144 bits. The average value for the Structural Similarity Index Metric (SSIM) for the proposed scheme is found to be 0.9962 which is higher when compared to the techniques under comparison. The average False Positive Rate (F-PR) for the proposed algorithm is found to be 3.9916 for tampering rates varied from 5 to 50%. The scheme outperforms the various state-of-the-art techniques making it an efficient candidate for tamper detection and localization in smart health applications.
机译:随着事物互联网(物联网),云计算,人工智能(AI)和大数据,预计智能医疗保健服务的云计算,智能医疗保健服务将提供潜在和有能力的医疗保健服务。智能医疗保健通过使其更方便,更有利,更有效,更加个性化,更换传统的医疗保健系统。然而,全世界猖獗的卫生部门数据泄露作证,旨在确保不安全网络共享的数据的完整性和真实性。本文介绍了能够验证医学图像并精确定位篡改区域的安全自嵌入脆弱水印方案。从名为验证水印和定位水印的盖子图像产生的两个水印用于接收器处的篡改区域的认证和定位。对于水印产生,盖子图像被分成4×4非重叠块。在水印生成之前使用混沌加密允许每个块。认证水印是块的每个像素的4个最高有效位(MSB)的函数。脱氧核糖核酸(DNA)编码用于确保在其嵌入之前的认证水印的安全性。本地化水印利用该块中所选块的算术平均值和最大像素强度(MPI)。应用DNA算法以生成水印数据的最终认证。与最先进的技术相比,发现针对所提出的工作获得的篡改检测和定位结果。尽管嵌入容量更高的嵌入容量,所提出的算法保持更好的视觉质量,如图262,144位的嵌入容量为51.94 dB的平均峰值信号(PSNR)值。所提出的方案的结构相似性指数度量(SSIM)的平均值为0.9962,与在比较下的技术相比时更高。该算法的平均假阳性率(F-PR)被发现为3.9916,用于篡改速率从5到50%变化。该方案优于各种最先进的技术,使其成为篡改篡改检测和智能健康应用中的定位的有效候选者。

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