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Biometric Sample Extraction using Mahalanobis Distance in Cardioid Based Graph using Electrocardiogram Signals

机译:使用心电图信号使用基于心电图的曲线图的生物统计样本提取

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In this paper, a person identification mechanism implemented with Cardioid based graph using electrocardiogram (ECG) is presented. Cardioid based graph has given a reasonably good classification accuracy in terms of differentiating between individuals. However, the current feature extraction method using Euclidean distance could be further improved by using Mahalanobis distance measurement producing extracted coefficients which takes into account the correlations of the data set. Identification is then done by applying these extracted features to Radial Basis Function Network. A total of 30 ECG data from MITBIH Normal Sinus Rhythm database (NSRDB) and MITBIH Arrhythmia database (MITDB) were used for development and evaluation purposes. Our experimentation results suggest that the proposed feature extraction method has significantly increased the classification performance of subjects in both databases with accuracy from 97.50% to 99.80% in NSRDB and 96.50% to 99.40% in MITDB. High sensitivity, specificity and positive predictive value of 99.17%, 99.91% and 99.23% for NSRDB and 99.30%, 99.90% and 99.40% for MITDB also validates the proposed method. This result also indicates that the right feature extraction technique plays a vital role in determining the persistency of the classification accuracy for Cardioid based person identification mechanism.
机译:本文介绍了使用心电图(ECG)用心电子基础(ECG)实现的人识别机制。基于CardioID的图表在个人之间的区分方面给出了合理的分类准确性。然而,通过使用Mahalanobis距离测量产生提取的系数,可以进一步改善使用欧几里德距离的当前特征提取方法,这考虑了数据集的相关性。然后通过将这些提取的特征应用于径向基函数网络来完成识别。来自MITBIH普通窦节奏数据库(NSRDB)和MITBIH心律失常数据库(MITDB)的共有30个ECG数据用于开发和评估目的。我们的实验结果表明,拟议的特征提取方法在NSRDB中的精确度为97.50%至99.80%的准确性增加了两个数据库中受试者的分类性能,在MITDB中获得96.50%至99.40%。 NSRDB的高灵敏度,特异性和阳性预测值99.17%,99.91%和99.23%,99.30%,99.30%,99.90%和99.40%的MITDB还验证了所提出的方法。该结果还表明,右特征提取技术在确定基于心脏基础的人识别机制的分类精度的持久性方面起着至关重要的作用。

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