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Analysis of Human Electrocardiogram for Biometric Recognition Using Analytic and AR Modeling Extracted Parameters

机译:使用解析和AR建模提取参数对人体心电图进行生物识别的分析

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The electrocardiograph (ECG) contains cardiac features unique to each individual. By analyzing ECG, it should therefore be possible not only to detect the rate and consistency of heartbeats but to also extract other signal features in order to identify ECG records belonging to individual subjects. In this paper, a new approach for automatic analysis of single lead ECG for human recognition is proposed and evaluated. Eighteen temporal, amplitude, width and autoregressive (AR) model parameters are extracted from each ECG beat and classified in order to identify each individual. Proposed system uses pre-processing stage to decrease the effects of noise and other unwanted artifacts usually present in raw ECG data. Following pre-processing steps, ECG stream is partitioned into separate windows where each window includes single beat of ECG signal. Window estimation is based on the localization of the R peaks in the ECG stream that detected by Filter bank method for QRS complex detection. ECG features ? temporal, amplitude and AR coefficients are then extracted and used as an input to K-nn and SVM classification algorithms in order to identify the individual subjects and beats. Signal pre-processing techniques, applied feature extraction methods and some intermediate and final classification results are presented in this paper.
机译:心电图仪(ECG)包含每个人独有的心脏功能。通过分析心电图,因此不仅应该检测心跳的速率和一致性,而且还应该提取其他信号特征,以便识别属于各个受试者的心电图记录。本文提出并评估了一种用于人体识别的单导联心电图自动分析的新方法。从每个ECG搏动中提取18个时间,幅度,宽度和自回归(AR)模型参数并进行分类,以识别每个人。拟议的系统使用预处理阶段来减少通常在原始ECG数据中存在的噪声和其他不想要的伪影的影响。在预处理步骤之后,ECG流被划分为单独的窗口,其中每个窗口都包含单个心跳信号。窗口估计是基于ECG流中R峰的定位,该R峰是通过Filter bank方法检测到的QRS复杂检测的。心电图功能?然后提取时间,幅度和AR系数,并将其用作K-nn和SVM分类算法的输入,以识别各个主体和节拍。本文介绍了信号预处理技术,应用的特征提取方法以及一些中间和最终分类结果。

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