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Use of Extension Method with Chaotic Eye Features for Electrocardiogram Biometric Recognition

机译:具有混沌眼睛特征的扩展方法在心电图生物特征识别中的应用

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An electrocardiogram (ECG) documents the voltage changes during heartbeats. It captures electrocardiographic signals in a noninvasive way. ECGs are complicated and vary from person to person, making them ideal for use in biometric recognition systems. A number of studies have shown that ECG signals are nonlinear curves and dynamically chaotic. The ECG signals were measured on the basis of the Einthoven's triangle principle in this study. Combining captured ECG signals using ECG biosensors and a data acquisition (DAQ) card, LabVIEW was used to design a human-machine interface (HMI) to display the processed ECG signals for test subjects. The saved ECG data were plotted in a dynamical map of the chaotic dynamic error using a master-slave chaotic system. The chaotic eye was selected as a feature and an identity database was built using an element model. Personal identity was identified by categorizing with an extension method. Thirty-six subjects were tested and the identification accuracy was 94.4%. The MIT-BIH Normal Sinus Rhythm Database (NSRDB) and an arrhythmia database were used in this study. Using the extension method, the classification accuracy between normal and cardiac arrhythmia was 91.67%, and the accuracy was increased to 100% when matter element extensibility was employed. Results suggested that the biometric recognition method developed in this study performs identification rapidly with high positive recognition rate and reliability.
机译:心电图(ECG)记录心跳期间的电压变化。它以无创方式捕获心电图信号。 ECG复杂且因人而异,因此非常适合用于生物识别系统。许多研究表明,ECG信号是非线性曲线,并且动态混乱。在这项研究中,根据Einthoven的三角原理测量了ECG信号。 LabVIEW使用ECG生物传感器和数据采集(DAQ)卡将捕获的ECG信号进行组合,用于设计人机界面(HMI)以显示处理过的ECG信号以供测试对象使用。使用主从混沌系统将保存的ECG数据绘制在混沌动态误差的动态图中。选择混乱的眼睛作为特征,并使用元素模型建立身份数据库。通过使用扩展方法进行分类来识别个人身份。测试了36名受试者,识别准确率为94.4%。在这项研究中使用了MIT-BIH正常窦性心律数据库(NSRDB)和心律失常数据库。使用扩展方法,正常心律失常和心律失常之间的分类准确度为91.67%,并且当使用物质元素可扩展性时,该准确性提高到100%。结果表明,本研究开发的生物特征识别方法可以快速进行识别,具有较高的阳性识别率和可靠性。

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