Evaluation of Electrocardiogram Biometric Verification Models Based on Short Enrollment Time on Medical and Wearable Recorders

H. Bıçakcı, Marco Santopietro, Matthew James Boakes, R. Guest
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引用次数: 3

Abstract

Biometric authentication is nowadays widely used in a multitude of scenarios. Several studies have been conducted on electrocardiogram (ECG) for subject identification or verification among the various modalities. However, none have considered a typical implementation with a mobile device and the necessity for a fast-training model with limited recording time for the signal. This study tackles this issue by exploring various classification models on short recordings and evaluating the performance varying the sample length and the training set size. We run our tests on two public datasets collected from wearable and medical devices and propose a pipeline for ECG authentication with limited data required for competitive usage across applications.
基于医疗和可穿戴记录仪短登记时间的心电图生物特征验证模型评估
如今,生物识别认证被广泛应用于许多场景中。一些研究已经在心电图(ECG)上进行,用于各种模式之间的受试者识别或验证。然而,没有人考虑过移动设备的典型实现以及信号记录时间有限的快速训练模型的必要性。本研究通过在短记录上探索各种分类模型并评估不同样本长度和训练集大小的性能来解决这个问题。我们在从可穿戴设备和医疗设备收集的两个公共数据集上运行我们的测试,并提出了一个用于ECG认证的管道,该管道具有跨应用程序竞争性使用所需的有限数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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