A novel human identification system based on electrocardiogram features

H. Gurkan, U. Guz, B. Yarman
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引用次数: 8

Abstract

In this work we present a novel biometric authentication approach based on combination of AC/DCT features, MFCC features, and QRS beat information of the ECG signals. The proposed approach is tested on a subset of 30 subjects selected from the PTB database. This subset consists of 13 healthy and 17 non-healthy subjects who have two ECG records. The proposed biometric authentication approach achieves average frame recognition rate of %97.31 on the selected subset. Our experimental results imply that the frame recognition rate of the proposed authentication approach is better than that of ACDCT and MFCC based biometric authentication systems, individually.
一种新的基于心电图特征的人体识别系统
在这项工作中,我们提出了一种新的基于AC/DCT特征、MFCC特征和心电信号QRS拍信息相结合的生物识别认证方法。所提出的方法在从PTB数据库中选择的30个受试者的子集上进行了测试。该子集包括13名健康受试者和17名有2份心电图记录的非健康受试者。所提出的生物特征认证方法对所选子集的平均帧识别率达到了%97.31。实验结果表明,该认证方法的帧识别率优于基于ACDCT和MFCC的生物特征认证系统。
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