基于心电的心律失常检测与患者识别系统

B. Vuksanovic, M. Alhamdi
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引用次数: 14

摘要

本文介绍了一种通过自动分类正常和两种异常心电信号来检测心律失常的系统。首先对心电信号进行预处理,以减少基线漂移、噪声和其他可能存在于信号中的不需要的成分。然后应用信号的自回归建模来提取信号特征的小集合-自回归(AR)信号模型的系数。提取的三种不同心电类型的AR参数组在特征空间上分离良好,为来自测试集的每个心电信号提供了完善的信号分类和心脏状况检测。为了评估所开发的个体患者识别技术的准确性,特征集扩展了附加参数- AR建模误差功率。提出了一种新的基于心电的生物识别系统,并给出了初步的患者识别结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG based system for arrhythmia detection and patient identification
In this paper a system to detect arrhythmia by automatically classifying normal and two types of abnormal ECG signals is presented. ECG signals are first pre-processed to reduce the baseline drift, noise and other unwanted components that might be present in the signal. The autoregressive modelling of the signals is then applied to extract small set of signal features - coefficients of autoregressive (AR) signal model. Groups of extracted AR parameters for three different ECG types are well separated in feature space which provides for perfect signal classification and heart condition detection for every ECG signal from the test set. In order to assess the accuracy of developed technique for individual patient identification, feature sets are extended with additional parameter - power of AR modelling error. A new ECG based biometric system is proposed and initial patient recognition results presented in the conclusion of the paper.
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