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A morphologically robust chaotic map based approach to embed patient’s confidential data securely in non-QRS regions of ECG signal

机译:基于形态学上的强大的混沌地图,在ECG信号的非QRS区域安全地嵌入患者机密数据

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摘要

In e-healthcare paradigm, the physiological signals along with patient's personal information need to be transmitted to remote healthcare centres. Before sharing this sensitive information over the unsecured channel, it is prerequisite to protect it from unauthorised access. The proposed method explores ECG signal as the cover signal to hide patient's personal information without disturbing its diagnostic features. Chaotic maps are used to randomly select the embedding locations in the non-QRS region while excluding the sensitive QRS region of ECG train. Optimum Location Selection algorithm has been designed to select the embedding locations in non-QRS embedding region. The proposed algorithm is thoroughly examined and the distortion is measured in terms of statistical parameters and clinical measures such as PRD, PRDN, PRD1024, PSNR, SNR, MSE, MAE, KL-Divergence, WWPRD and WEDD. The robustness of the algorithm is verified using the parameters such as key space and key sensitivity. The implementation has been extensively tested on all the 48 records of the standard MIT-BIH Arrhythmia database, abnormal databases [CU-VT, BIDMC-CHF and PTB (leads I, II and III)] and self-recorded data of 20 subjects. The algorithm yields average PRD, MSE, KL-Divergence, PSNR, WWPRD and WEDD of 4.7x10(-3), 1.13x10(-5), 1.29x10(-5), 50.28, 0.15 and 0.04at an average maximum EC of 0.45(96876 bits) on MIT-BIH Arrhythmia database and 0.016, 3.38x10(-5), 1.8x10(-4), 46.03, 0.13 and 0.03 respectively at an average maximum EC of 0.47 (102571 bits) on self-recorded data which clearly reveals the competency of the proposed algorithm in comparison with the other state of the art ECG steganography approaches.
机译:在E-HealthCare范式中,生理信号以及患者的个人信息需要传递给远程医疗中心。在通过不安全的频道共享此敏感信息之前,请将其免受未经授权的访问权限进行前提。所提出的方法探讨了ECG信号作为封面信号,以隐藏患者的个人信息,而不会扰乱其诊断功能。混沌映射用于随机选择非QRS区域中的嵌入位置,同时排除ECG列车的敏感QRS区域。最佳位置选择算法旨在选择非QRS嵌入区域中的嵌入位置。彻底检查了所提出的算法,并且根据统计参数和临床测量的抗变形,如PRD,PRDN,PRD1024,PSNR,SNR,MSE,MAE,KL - 发散,WWPRD和WEDD。使用诸如关键空间和关键灵敏度的参数来验证算法的稳健性。在标准MIT-BIH心律失常数据库,异常数据库[Cu-VT,BIDMC-CHF和PTB(引线I,II和III)]和20个科目的自记录数据的所有48条记录中,该实施已被广泛测试。该算法产生平均PRD,MSE,KL - 发散,PSNR,WWPRD和WEDD为4.7×10(-3),1.13x10(-5),1.29x10(-5),50.28,0.15和0.04AT的平均最大EC 0.45(96876位)在MIT-BIH心律失常数据库上,0.016,3.38x10(-5),1.8x10(-4),46.03,0.13和0.03分别在自记录数据上的平均最大EC(102571位)这清楚地揭示了所提出的算法的能力与ECG隐写术方法的其他状态相比。

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