利用多导联心电图信号进行对象识别的简单高效的多生物识别技术

K. Sidek, Mohammed M. Shobaki, I. Khalil, Sheroz Khan, Zahirul Alam, N. A. Malik
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引用次数: 0

摘要

本文提出了一种简单有效的多生物特征识别技术,利用多导联心电图信号进行受试者识别。该技术通过在同一模态组中使用多个可用源,显著提高了生物识别系统的识别性能。采用采样率为1000hz的PTB诊断心电图数据库(PTBDB)中采集的30名受试者12次导联心电图数据来验证该方法。归一化在识别过程中起着重要的作用,因为它唯一地匹配了双极肢体导联和补充增强单极肢体导联的心电信号。从实验结果来看,自相似度突出,人与人之间有明显的区别,所有的线索都有较高的相关值,分类准确率在93%到100%之间。结果表明,该方法对多生物识别系统具有鲁棒性、可靠性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simple and efficient multibiometric technique for subject recognition using multilead electrocardiogram signal
In this paper, a simple and effective multibiometric technique for subject recognition using multiple lead electrocardiogram (ECG) signals is presented. The proposed technique significantly improves the recognition performance of a biometric system by using multiple sources available in the same modality group. A total of 30 subjects with 12 lead ECG measurements obtained from PTB Diagnostic ECG database (PTBDB) with sampling rate of 1000 Hz were used to verify the approach. Normalization plays an important role in the identification stage as it uniquely matches between ECG signals from bipolar limb leads and also the supplementary augmented unipolar limb leads. Based on the experimentation results, self-similarities are prominent and distinct from one person to another by obtaining high correlation values and relatively good classification accuracies ranging from 93% to 100% for all the leads. This result also suggests the robustness, reliability and stability of the proposed method for multibiometric system.
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