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ECG based biometric identification using one-dimensional local difference pattern

机译:基于ECG的生物识别识别,使用一维局部差异图案

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摘要

In this work, an enhanced version of 1D local binary pattern is proposed, for the derivation of the most relevant features for ECG-based human recognition. Generally, ECG signal characteristics by nature impose some notable challenges, mostly related to its sensitivity to noises, artifacts, behavioral and emotional disorders and other variability factors. To deal with this critical issue, we use a One-dimensional Local Difference Pattern (1D-LDP) operator to extract the discriminating statistical features from ECG by using the difference between consecutive neighboring samples to capture both the micro and macro patterns information in the heartbeat activity while reducing the local and global variation occurred in ECG over time. To verify its robustness, K-nearest neighbors (KNN) linear support vector machine (SVM) and neural network were performed as the classifier models in this work. Obtained results show that the 1D-LDP operator clearly outperforms existing 1D-LBP variants on MIT-BIH Normal Sinus Rhythm and ECG-1D database.
机译:在这项工作中,提出了一个增强版的1D本地二进制模式,用于导出基于ECG的人类认可的最相关的特征。通常,本质上的心电图信号特征施加了一些显着的挑战,主要与其对噪声,文物,行为和情绪障碍和其他可变性因素的敏感性相关。要处理这一关键问题,我们使用一维局部差异模式(1D-LDP)操作员通过使用连续相邻样本之间的差异来提取来自ECG的区分统计特征来捕获心跳中的微型和宏观图案信息在ECG随着时间的推移,在减少本地和全局变化的同时活动。为了验证其鲁棒性,作为本工作中的分类器模型执行K-Collect邻居(KNN)线性支持向量机(SVM)和神经网络。获得的结果表明,1D-LDP运营商在MIT-BIH普通窦节奏和ECG-1D数据库上显然优于现有的1D-LBP变体。

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