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A Novel Heart Rate Robust Method for Short-Term Electrocardiogram Biometric Identification

机译:一种用于短期心电图生物特征识别的新型心率鲁棒方法

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摘要

In the past decades, the electrocardiogram (ECG) has been investigated as a promising biometric by exploiting the subtle discrepancy of ECG signals between subjects. However, the heart rate (HR) for one subject may vary because of physical activities or strong emotions, leading to the problem of ECG signal variation. This variation will significantly decrease the performance of the identification task. Particularly for short-term ECG signal without many heartbeats, the hardly measured HR makes the identification task even more challenging. This study aims to propose a novel method suitable for short-term ECG signal identification. In particular, an improved HR-free resampling strategy is proposed to minimize the influence of HR variability during heartbeat processing. For feature extraction, the Principal Component Analysis Network (PCANet) is implemented to determine the potential difference between subjects. The proposed method is evaluated using a public ECG-ID database that contains various HR data for some subjects. Experimental results show that the proposed method is robust to HR change and can achieve high subject identification accuracy (94.4%) on ECG signals with only five heartbeats. Thus, the proposed method has the potential for application to systems that use short-term ECG signals for identification (e.g., wearable devices).
机译:在过去的几十年中,通过利用受试者之间心电图信号的细微差异,心电图(ECG)被作为一种有前途的生物特征进行了研究。但是,一名受试者的心率(HR)可能由于体育活动或强烈的情绪而变化,从而导致ECG信号变化的问题。这种变化将大大降低识别任务的性能。特别是对于没有很多心跳的短期ECG信号,几乎无法测量的HR使识别任务更具挑战性。这项研究旨在提出一种适用于短期ECG信号识别的新方法。特别是,提出了一种改进的无HR重采样策略,以最大程度地减小心跳处理过程中HR变异性的影响。对于特征提取,实现了主成分分析网络(PCANet),以确定对象之间的潜在差异。使用公共ECG-ID数据库评估提出的方法,该数据库包含某些受试者的各种HR数据。实验结果表明,所提出的方法对心率变化具有鲁棒性,并且仅需五个心跳就可以在ECG信号上实现较高的主题识别精度(94.4%)。因此,所提出的方法具有潜力应用于使用短期ECG信号进行识别的系统(例如,可穿戴设备)。

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