Sum of Sine Modeling Approach as a New Processing Technique For a Biometric System Based on ECG Signal

Q4 Biochemistry, Genetics and Molecular Biology International Journal of Biology and Biomedical Engineering Pub Date : 2020-12-09 DOI:10.46300/91011.2020.14.27
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引用次数: 1

Abstract

Biometrics is considered in current research as one of the best methods for authenticating human beings. In our paper, the heartbeat biometric, also called Electrocardiographic (ECG), is working on. This biometric is chosen because human ECGs cannot be falsely created and replicated. This study aims to find the best features from this biometric that can identify a person, given the extractions and classification algorithms for the heartbeat biometric signal. Depending on a literature study we work to propose a new and more efficient technique based on a new method for ECG features extraction and these features will be the inputs for pattern recognition classifier. This methodology will be tested on real experimental ECG data that is collected. The Data collected from 10 subjects by a commercial ECG device taking the data from lead 1. The pre-processing steps start with the Empirical Mode Decomposition (EMD) before digital filters which are: low pass, high pass, and derivative pass filters. Features extraction steps are peak detection, segmentation, and wave modeling for each segment. The classification used the Multi-Layer Perceptron and compared it to classification using Radial Basis Function were the results of MLP were much better for these applications since the accuracy of the final results of MLP is 99% and that related to the RBF is 95%.
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正弦求和建模方法作为一种新的心电信号生物识别处理技术
生物识别技术在目前的研究中被认为是验证人类身份的最佳方法之一。在我们的论文中,心跳生物测量,也被称为心电图(ECG),正在研究。之所以选择这种生物特征,是因为人类脑电图不能被错误地创造和复制。本研究的目的是在给定心跳生物特征信号的提取和分类算法的情况下,从这种生物特征中找到可以识别一个人的最佳特征。在文献研究的基础上,我们提出了一种新的更有效的心电特征提取方法,并将这些特征作为模式识别分类器的输入。该方法将在收集的真实实验心电数据上进行测试。采用商用心电图仪从导联1处采集10例受试者的数据。预处理步骤从数字滤波器之前的经验模式分解(EMD)开始,这些滤波器是:低通,高通和导数通滤波器。特征提取步骤是峰检测、分割和每个片段的波建模。使用多层感知器进行分类,并将其与使用径向基函数进行分类进行比较,MLP的结果在这些应用中要好得多,因为MLP最终结果的准确率为99%,而与RBF相关的准确率为95%。
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来源期刊
International Journal of Biology and Biomedical Engineering
International Journal of Biology and Biomedical Engineering Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
自引率
0.00%
发文量
42
期刊介绍: Topics: Molecular Dynamics, Biochemistry, Biophysics, Quantum Chemistry, Molecular Biology, Cell Biology, Immunology, Neurophysiology, Genetics, Population Dynamics, Dynamics of Diseases, Bioecology, Epidemiology, Social Dynamics, PhotoBiology, PhotoChemistry, Plant Biology, Microbiology, Immunology, Bioinformatics, Signal Transduction, Environmental Systems, Psychological and Cognitive Systems, Pattern Formation, Evolution, Game Theory and Adaptive Dynamics, Bioengineering, Biotechnolgies, Medical Imaging, Medical Signal Processing, Feedback Control in Biology and Chemistry, Fluid Mechanics and Applications in Biomedicine, Space Medicine and Biology, Nuclear Biology and Medicine.
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