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ECG-based Biometrics using a Deep Autoencoder for Feature Learning: An Empirical Study on Transferability

机译:基于ECG的生物识别性,使用深度自动化器进行特色学习:可转移性的实证研究

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Biometric identification is the task of recognizing an individual using biological or behavioral traits and, recently, electrocardiogram has emerged as a prominent trait. In addition, deep learning is a fast-paced research field where several models, training schemes and applications are being actively investigated. In this paper, an ECG-based biometric system using a deep autoencoder to learn a lower dimensional representation of heartbeat templates is proposed. A superior identification performance is achieved, validating the expressiveness of such representation. A transfer learning setting is also explored and results show practically no loss of performance, suggesting that these deep learning methods can be deployed in systems with offline training.
机译:生物识别是使用生物或行为特征识别个人的任务,最近,心电图已成为突出的特征。 此外,深度学习是一个快节奏的研究领域,正在积极调查多种型号,培训计划和应用。 在本文中,提出了一种基于ECG的生物识别系统,该生物识别系统使用深度自动控制者学习心跳模板的较低尺寸表示。 实现了卓越的识别性能,验证了这种代表性的表现力。 还探讨了转移学习设置,结果显示实际上不会损失绩效,表明这些深度学习方法可以在具有离线培训的系统中部署。

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