Abstract

We evaluated electrocardiogram (ECG) biometrics using pre-configured models of convolutional neural networks (CNNs) with various time-frequency representations. Biometrics technology records a person’s physical or behavioral characteristics in a digital signal via a sensor and analyzes it to identify the person. An ECG signal is obtained by detecting and amplifying a minute electrical signal flowing on the skin using a noninvasive electrode when the heart muscle depolarizes at each heartbeat. In biometrics, the ECG is especially advantageous in security applications because the heart is located within the body and moves while the subject is alive. However, a few body states generate noisy biometrics. The analysis of signals in the frequency domain has a robust effect on the noise. As the ECG is noise-sensitive, various studies have applied time-frequency transformations that are robust to noise, with CNNs achieving a good performance in image classification. Studies have applied time-frequency representations of the 1D ECG signals to 2D CNNs using transforms like MFCC (mel frequency cepstrum coefficient), spectrogram, log spectrogram, mel spectrogram, and scalogram. CNNs have various pre-configured models such as VGGNet, GoogLeNet, ResNet, and DenseNet. Combinations of the time-frequency representations and pre-configured CNN models have not been investigated. In this study, we employed the PTB (Physikalisch-Technische Bundesanstalt)-ECG and CU (Chosun University)-ECG databases. The MFCC accuracies were 0.45%, 2.60%, 3.90%, and 0.25% higher than the spectrogram, log spectrogram, mel spectrogram, and scalogram accuracies, respectively. The Xception accuracies were 3.91%, 0.84%, and 1.14% higher than the VGGNet-19, ResNet-101, and DenseNet-201 accuracies, respectively.

Highlights

  • Biometrics technology records a person’s physical or behavioral characteristics in a digital signal via a sensor and analyzes it to identify the person

  • The ECG is especially advantageous in security applications because the heart is located within the body and moves while the subject is alive

  • Two databases were used to analyze the performance of the deep model for time-frequency representations in the ECG biometrics

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Summary

Introduction

Biometrics technology records a person’s physical or behavioral characteristics in a digital signal via a sensor and analyzes it to identify the person. Various studies have applied time-frequency representations of 1D signals to CNNs using transforms such as MFCC. CNNs have various pre-configured models such as VGGNet [28], Xception [29], ResNet [30], and DenseNet [31] These time-frequency representations are normally used in signal processing such as voice and sound and have reported improvement of performance such as in a noisy environment. In ECG signals, it is necessary to find out whether the combination of time-frequency representation and CNN is significant enough to be applied to personal identification. We evaluated ECG biometrics using pre-configured models of the CNN with various time-frequency representations.

VGGNet
DenseNet
DenseNet has approximately usingdegradation a dense connectivity as shown
Xception
Preprocessing
Time-Frequency
4: The energy values of the3:mel filter bank are
ECG Biometrics Using Various CNN Models
Database
Experimental Results
Conclusions
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