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A reversible and multipurpose ECG data hiding technique for telemedicine applications

机译:一种用于远程医疗应用的可逆多用途ECG数据隐藏技术

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Biomedical signals serves as a backbone of telemedicine industry and its analysis help the remote diagnosis possible. Security of biomedical data is one of the critical issues during its transmission from one storage device to another storage device. In this work, a completely reversible data hiding method is proposed for the ECG (Electrocardiogram) data. The proposed scheme is designed in such a way that it can find out false ownership claims as well as detect the tampered region of ECG data. In addition, original ECG signal is perfectly reconstructed from watermarked signal. The reversibility is tested for a large set of 460 different ECG signals generated from MIT-BIH arrhythmia database and complete reversibility (100%) is obtained each time. In proposed approach, deep neural network is used for an improved error prediction and prediction error expansion (PEE) is combined with it to ensure reversibility. Proposed method is a high capacity method and data hiding of 0.99 bps (bits per sample) is achieved with very little distortion in watermarked signal. The performance of proposed work is evaluated through percentage residual difference (PRD), signal to noise ratio (SNR) and normalized cross correlation (NCC). The most important contribution of proposed work is its multipurpose nature: ownership detection, tamper localization and 100% reversibility. Tamper detection and localization performance of the proposed method is also tested against different attacks and it is found to be quite good. (C) 2019 Elsevier B.V. All rights reserved.
机译:生物医学信号是远程医疗行业的骨干力量,其分析有助于远程诊断。生物医学数据的安全性是从一个存储设备传输到另一存储设备期间的关键问题之一。在这项工作中,针对ECG(心电图)数据提出了一种完全可逆的数据隐藏方法。拟议的方案以这样一种方式设计:它可以找出虚假的所有权主张并检测ECG数据的被篡改区域。此外,原始ECG信号可以从加水印的信号中完美重建。针对从MIT-BIH心律失常数据库中生成的460种不同的ECG信号进行了可逆性测试,每次都获得了完全可逆性(100%)。在所提出的方法中,深度神经网络用于改进的错误预测,并与预测错误扩展(PEE)相结合以确保可逆性。提出的方法是一种高容量方法,并且在水印信号中几乎没有失真的情况下实现了0.99 bps(每个样本的位数)的数据隐藏。拟议工作的性能通过残差百分比(PRD),信噪比(SNR)和归一化互相关(NCC)进行评估。拟议工作的最重要贡献是其多用途性质:所有权检测,篡改本地化和100%可逆性。还针对不同的攻击测试了所提出方法的篡改检测和定位性能,并且发现它相当不错。 (C)2019 Elsevier B.V.保留所有权利。

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