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Personal recognition using geometric features in the phase space of electrocardiogram

机译:个人识别在心电图的相位空间中使用几何特征

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Electrocardiogram (ECG) is one of the biomedical properties that have recently been studied for biometrics. We prop ose a new method for human recognition by phase-space reconstruction (PSR) of a single-lead ECG signal. To reconstruct a single-lead ECG signal into phase space, we used a time delay technique We extracted the geometric features through the trajectory from the phase space and analyzed it using our method. The ECG signals used in this study were measured in various situations such at rest, during exercise, while listening to music, and watching a video. We performed phase space reconstruction by applying some time-delay to the measured ECG signal and extracted 21 geometric al features to find the best identifiable time-delay value through Support vector machine learning. The results were performed on 1 3 subjects. The accuracy was 97.8% when the delay was 8ms. Based on this result personal authentication was conducted. The results show 97.7% accuracy, 1.5% FAR(False Acceptance Ratio) and 2.9% FRR(False Rejection Ratio).
机译:心电图(ECG)是最近研究生物识别性的生物医学性质之一。我们对单引线ECG信号的相位空间重建(PSR)进行了人类识别的新方法。要将单引主ECG信号重建为相空间,我们使用了时间延迟技术,我们通过轨迹从相位空间提取了几何特征,并使用我们的方法分析了它。本研究中使用的ECG信号在休息期间在休息期间在休息时测量,同时听音乐,并观看视频。我们通过将一些时间延迟应用于测量的ECG信号并提取21几何AL特征来执行相位空间重建,以通过支持向量机学习找到最佳可识别的时延值。结果是在1 3个受试者上进行的。当延迟为8ms时,准确性为97.8 %。基于此结果,进行个人认证。结果显示97.7 %精度,1.5 %远(假验收比率)和2.9 %FRR(假拒绝比)。

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