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ECG Identification For Personal Authentication Using LSTM-Based Deep Recurrent Neural Networks

机译:使用基于LSTM的深度递归神经网络进行个人身份验证的ECG识别

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摘要

Securing personal authentication is an important study in the field of security. Particularly, fingerprinting and face recognition have been used for personal authentication. However, these systems suffer from certain issues, such as fingerprinting forgery, or environmental obstacles. To address forgery or spoofing identification problems, various approaches have been considered, including electrocardiogram (ECG). For ECG identification, linear discriminant analysis (LDA), support vector machine (SVM), principal component analysis (PCA), deep recurrent neural network (DRNN), and recurrent neural network (RNN) have been conventionally used. Certain studies have shown that the RNN model yields the best performance in ECG identification as compared with the other models. However, these methods require a lengthy input signal for high accuracy. Thus, these methods may not be applied to a real-time system. In this study, we propose using bidirectional long short-term memory (LSTM)-based deep recurrent neural networks (DRNN) through late-fusion to develop a real-time system for ECG-based biometrics identification and classification. We suggest a preprocessing procedure for the quick identification and noise reduction, such as a derivative filter, moving average filter, and normalization. We experimentally evaluated the proposed method using two public datasets: MIT-BIH Normal Sinus Rhythm (NSRDB) and MIT-BIH Arrhythmia (MITDB). The proposed LSTM-based DRNN model shows that in NSRDB, the overall precision was 100%, recall was 100%, accuracy was 100%, and F1-score was 1. For MITDB, the overall precision was 99.8%, recall was 99.8%, accuracy was 99.8%, and F1-score was 0.99. Our experiments demonstrate that the proposed model achieves an overall higher classification accuracy and efficiency compared with the conventional LSTM approach.
机译:保护个人身份验证是安全领域的重要研究。特别地,指纹和面部识别已被用于个人认证。但是,这些系统存在某些问题,例如指纹伪造或环境障碍。为了解决伪造或欺骗识别问题,已经考虑了多种方法,包括心电图(ECG)。对于ECG识别,通常使用线性判别分析(LDA),支持向量机(SVM),主成分分析(PCA),深度递归神经网络(DRNN)和递归神经网络(RNN)。某些研究表明,与其他模型相比,RNN模型在ECG识别方面表现出最好的性能。但是,这些方法要求冗长的输入信号以实现高精度。因此,这些方法可能不会应用于实时系统。在这项研究中,我们建议使用基于双向长短期记忆(LSTM)的深层递归神经网络(DRNN)通过后期融合来开发基于ECG的生物特征识别和分类的实时系统。我们建议一种用于快速识别和降低噪声的预处​​理程序,例如导数滤波器,移动平均滤波器和归一化。我们通过两个公共数据集对实验方法进行了评估:MIT-BIH正常窦性心律(NSRDB)和MIT-BIH心律失常(MITDB)。所提出的基于LSTM的DRNN模型表明,在NSRDB中,总体精度为100%,召回率为100%,准确性为100%,F1得分为1。对于MITDB,总体精度为99.8%,召回率为99.8% ,准确性为99.8%,F1评分为0.99。我们的实验表明,与传统的LSTM方法相比,该模型可实现更高的分类精度和效率。

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