Research on ECG Biometric in Cardiac Irregularity Conditions

Zhao Wang, Yue Zhang
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引用次数: 8

Abstract

This paper studies the principle of ECG signals applied to identification, particularly considers the case of users' ECG abnormal conditions. This paper presents an improved multi-template matching algorithm for identification, which can achieve good discrimination effects under ECG abnormality. Normal and abnormal ECG templates are constructed by QRS complex, the discrimination is based on the correlation coefficient of the testing data and template. We used 44 ECG data files from the MIT-BIH Arrhythmia Database (MITDB) to measure the performance of the algorithm, extracted normal templates in 18 data files as well as normal and abnormal templates in the remaining 26 data files. The experiment obtained an 88.06% accuracy of template matching, when considering the discrimination results of all the testing data belong to one user, the individual recognition accuracy reaches 100%. Experiments showed that the improved multi-template matching algorithm characterized by QRS complex can be used to identify individuals in the state of arrhythmia.
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心电生物识别技术在心律失常中的应用研究
本文研究了心电信号应用于识别的原理,特别考虑了用户心电异常情况的情况。本文提出了一种改进的多模板匹配识别算法,该算法在心电异常情况下能够取得良好的识别效果。利用QRS复合体构建正常和异常心电图模板,根据检测数据与模板的相关系数进行判别。我们使用来自MIT-BIH心律失常数据库(MITDB)的44个心电数据文件来衡量算法的性能,提取了18个数据文件中的正常模板,以及其余26个数据文件中的正常和异常模板。实验获得了88.06%的模板匹配准确率,考虑到所有测试数据属于同一用户的识别结果,个体识别准确率达到100%。实验表明,改进的以QRS复合体为特征的多模板匹配算法可用于识别处于心律失常状态的个体。
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