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Heartrate-Dependent Heartwave Biometric Identification With Thresholding-Based GMM–HMM Methodology

机译:基于阈值的GMM–HMM方法的心率依赖性心电图生物识别

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摘要

This paper presents an adaptive heartrate-dependent heartwave-signal-based biometric identification. A reliable and continuous heartwave extraction method featuring the hybridized discrete waveform transform method with heartrate adaptive QT and PR intervals to perform comprehensive heartwave features extractions on more than 35 000 heartwave signal. The size of training data was determined and the hybridized Gaussian-mixture-model-hidden-Markov-model classification method was used in the classification. Dynamic thresholding criterial incorporating user-specific scores and heartrate were adopted. The identification process using dynamic thresholding criterial achieved a remarkable receiver operating characteristic of 0.89 in true positive rate and an equal error rate of 0.11.
机译:本文提出了一种基于自适应心率的心电信号生物识别。一种可靠且连续的心电波提取方法,具有混合离散波形变换方法以及心率自适应QT和PR间隔,可对35,000多个心电波信号进行全面的心电波特征提取。确定训练数据的大小,并使用混合的高斯混合模型-隐马尔可夫模型进行分类。采用结合用户特定得分和心率的动态阈值标准。使用动态阈值判据的识别过程在真实正率和相等误码率0.11的情况下实现了显着的接收器工作特性0.89。

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