Biometric Identification System Based on Electrocardiogram Data

Youssef Gahi, M. Lamrani, Abdelhak Zoglat, M. Guennoun, B. Kapralos, K. El-Khatib
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引用次数: 67

Abstract

Recent advancements in computing and digital signal processing technologies have made automated identification of people based on their biological, physiological, or behavioral traits a feasible approach for access control. The wide variety of available technologies has also increased the number of traits and features that can be collected and used to more accurately identify people. Systems that use biological, physiological, or behavioral trait to grant access to resources are called biometric systems. In this paper we present a biometric identification system based on the Electrocardiogram (ECG) signal. The system extracts 24 temporal and amplitude features from an ECG signal and after processing, reduces the set of features to the nine most relevant features. Preliminary experimental results indicate that the system is accurate and robust and can achieve a 100% identification rate with the reduced set of features.
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基于心电图数据的生物识别系统
计算机和数字信号处理技术的最新进展使得基于人的生物、生理或行为特征的自动识别成为一种可行的访问控制方法。各种各样的可用技术也增加了可以收集和用于更准确地识别人的特征和特征的数量。利用生物、生理或行为特征来获得资源的系统被称为生物识别系统。本文提出了一种基于心电信号的生物识别系统。该系统从心电信号中提取24个时间和幅度特征,经过处理后,将特征集缩减为9个最相关的特征。初步实验结果表明,该系统具有较强的鲁棒性和准确性,对特征集进行了简化,识别率达到100%。
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