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首页> 外文期刊>IEEE Transactions on Instrumentation and Measurement >Wavelet Distance Measure for Person Identification Using Electrocardiograms
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Wavelet Distance Measure for Person Identification Using Electrocardiograms

机译:利用心电图识别人的小波距离测量

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摘要

In this paper, the authors present an evaluation of a new biometric based on electrocardiogram (ECG) waveforms. ECG data were collected from 50 subjects during three data-recording sessions on different days using a simple user interface, where subjects held two electrodes on the pads of their thumbs using their thumb and index fingers. Data from session 1 were used to establish an enrolled database, and data from the remaining two sessions were used as test cases. Classification was performed using three different quantitative measures: percent residual difference, correlation coefficient, and a novel distance measure based on wavelet transform. The wavelet distance measure has a classification accuracy of 89%, outperforming the other methods by nearly 10%. This ECG person-identification modality would be a useful supplement for conventional biometrics, such as fingerprint and palm recognition systems.
机译:在本文中,作者提出了一种基于心电图(ECG)波形的新型生物识别技术的评估。使用简单的用户界面,在不同的日期进行的三个数据记录会话期间,从50名受试者中收集了ECG数据,其中受试者使用他们的拇指和食指在拇指垫上握住了两个电极。会话1的数据用于建立注册数据库,其余两个会话的数据用作测试用例。使用三种不同的定量度量进行分类:残差百分比,相关系数和基于小波变换的新颖距离度量。小波距离测量的分类精度为89%,优于其他方法近10%。这种ECG人识别模式将是常规生物识别(例如指纹和手掌识别系统)的有用补充。

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