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QRS detection-free electrocardiogram biometrics in the reconstructed phase space

机译:重建相空间中的QRS无检测心电图生物识别

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摘要

Most electrocardiogram (ECG) biometrics are based on detection of the QRS wave and comparison of structural features. ECG parameters are extracted from the waveform, but the process is arduous for noisy signals. Comparison based on phase space trajectory from a cardiac cycle as well as waveform comparison avoids the detection of ECG characteristic points, but has an alignment-free advantage. In this paper, we develop a QRS detection-free ECG biometric based on the phase space trajectory of the ECG signal. The multi-loop trajectory from a 5-s ECG epoch is condensed to a single-loop coarse-grained structure. The normalized spatial correlation (nSC), the mutual nearest point match (MNPM), and the mutual nearest point distance (MNPD) are considered as means of quantifying the similarity or dissimilarity between coarse-grained structures. We test our method on a population of 100 subjects. The accuracies of personal identification achieved for a single-lead ECG are 96%, 95%, and 96% for the MNPD, nSC, and MNPM methods respectively. When we analyze the phase space trajectory of a three-lead ECG, the accuracies increase to 99%, 98%, and 98% respectively. The coarse-grained phase space trajectory of an ECG signal is unambiguous and easy to compute, rendering ECGs a practical alternative to other biometrics.
机译:大多数心电图(ECG)生物特征识别都是基于QRS波的检测和结构特征的比较。心电图参数是从波形中提取的,但是对于嘈杂的信号来说,这一过程很艰巨。基于来自心动周期的相空间轨迹的比较以及波形比较避免了ECG特征点的检测,但具有无对准优势。在本文中,我们基于ECG信号的相空间轨迹开发了无QRS检测的ECG生物特征。从5秒ECG时代开始的多回路轨迹被压缩为单回路粗粒度结构。归一化空间相关性(nSC),相互最近点匹配(MNPM)和相互最近点距离(MNPD)被视为量化粗粒度结构之间相似性或相异性的手段。我们在100名受试者中测试了我们的方法。对于MNPD,nSC和MNPM方法,单导联心电图获得的个人识别准确率分别为96%,95%和96%。当我们分析三导联心电图的相空间轨迹时,准确度分别增加到99%,98%和98%。 ECG信号的粗粒度相空间轨迹是明确的且易于计算,从而使ECG成为其他生物识别技术的实用替代品。

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