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使用逻辑回归分类器,基于0.58秒的模板和肢体(I导联)心电图信号的12个特征进行硬件高效的鲁棒生物特征识别。

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

作者信息

Sahadat Md Nazmus, Jacobs Eddie L, Morshed Bashir I

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:1440-3. doi: 10.1109/EMBC.2014.6943871.

Abstract

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.

摘要

心电图(ECG)作为一种广为人知的心脏诊断信号,最近被用于个体的生物特征识别;然而,其可靠性和可重复性仍是研究热点。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,该技术具有较高的可靠性和识别准确率。使用我们定制的动态脑电图/心电图嵌入式设备(NeuroMonitor)采集无创心电图信号。从25至35岁的健康受试者(10名)中收集心电图数据,每次试验采集10秒。每个受试者的试验次数为10次。每次试验仅使用0.58秒的I导联心电图数据作为模板。采用硬件高效的基准点检测技术进行特征提取。为了获得重复随机子采样验证,数据以80:20的比例随机分为训练集和测试集。使用测试数据来确定分类准确率。具有12个提取特征的心电图模板数据在准确率(高达100%)和处理复杂度(计算时间为1.2毫秒)方面表现最佳。这项工作表明,使用所提出的算法,单肢体(I导联)心电图能够以最少的接触和数据处理快速、可靠地稳健识别个体。

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