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Hardware-efficient robust biometric identification from 0.58 second template and 12 features of limb (Lead I) ECG signal using logistic regression classifier

机译:使用逻辑回归分类器从0.58秒模板和肢体(Lead I)ECG信号的12个特征中进行硬件有效的鲁棒生物识别

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The electrocardiogram (ECG), widely known as a cardiac diagnostic signal, has recently been proposed for biometric identification of individuals; however reliability and reproducibility are of research interest. In this paper, we propose a template matching technique with 12 features using logistic regression classifier that achieved high reliability and identification accuracy. Non-invasive ECG signals were captured using our custom-built ambulatory EEG/ECG embedded device (NeuroMonitor). ECG data were collected from healthy subjects (10), between 25–35 years, for 10 seconds per trial. The number of trials from each subject was 10. From each trial, only 0.58 seconds of Lead I ECG data were used as template. Hardware-efficient fiducial point detection technique was implemented for feature extraction. To obtain repeated random sub-sampling validation, data were randomly separated into training and testing sets at a ratio of 80:20. Test data were used to find the classification accuracy. ECG template data with 12 extracted features provided the best performance in terms of accuracy (up to 100%) and processing complexity (computation time of 1.2ms). This work shows that a single limb (Lead I) ECG can robustly identify an individual quickly and reliably with minimal contact and data processing using the proposed algorithm.
机译:最近,心电图(ECG)被广泛称为心脏诊断信号,用于对个体进行生物特征识别。然而,可靠性和可再现性具有研究兴趣。在本文中,我们提出了一种使用逻辑回归分类器的具有12个特征的模板匹配技术,该技术实现了高可靠性和识别精度。非侵入性ECG信号是使用我们的定制移动式EEG / ECG嵌入式设备(NeuroMonitor)捕获的。在每次试验中,从25-35岁之间的健康受试者(10)收集ECG数据,持续10秒。每个受试者的试验次数为10。从每个试验中,仅使用0.58秒的Lead I ECG数据作为模板。实现了硬件有效的基准点检测技术,用于特征提取。为了获得重复的随机子采样验证,将数据按80:20的比例随机分为训练集和测试集。使用测试数据来找到分类准确性。具有12个提取特征的ECG模板数据在准确性(高达100%)和处理复杂性(计算时间为1.2ms)方面提供了最佳性能。这项工作表明,使用所提出的算法,单肢(领导I)心电图可以通过最少的接触和数据处理快速,可靠地可靠地识别个人。

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