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Fiducial ECG-Based Biometry: Comparison of Classifiers and Dimensionality Reduction Methods

机译:基于基准心电图的生物特征:分类器和降维方法的比较

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Biometry is becoming increasingly important in order to identify or authenticate individuals. Since the seminar work of Biel et at. in 1999 and 2001, the feasibility of using the electrocardiogram (ECG) for biometric recognition has been considered by several authors. Both fiducial methods, which are based on using fiducial points related to the detected QRS complexes, and non-fiducial methods, which do not require the extraction of the QRS complexes from the signals, have been considered. However, the feasibility of ECG-based biometry is still unclear, as the results from different studies are difficult to compare. In this paper, we concentrate on fiducial methods, comparing the performance of several classifiers and dimensionality reduction techniques on a publicly available dataset. Our results show that ECG-based biometry is indeed a feasible alternative to other widely used biometric traits, since an accuracy above 99.95% can be attained with the appropriate choice of the dimensionality reduction method and classifier.
机译:为了识别或鉴定个体,生物测定法变得越来越重要。自Biel等人的研讨会工作以来。在1999年和2001年,几位作者已经考虑过使用心电图(ECG)进行生物特征识别的可行性。已经考虑了基于使用与检测到的QRS复合体相关的基准点的基准方法和不需要从信号中提取QRS复合体的非基准方法。然而,由于很难比较不同研究的结果,因此基于ECG的生物测定的可行性尚不清楚。在本文中,我们集中于基准方法,在公开可用的数据集上比较了几种分类器和降维技术的性能。我们的结果表明,基于ECG的生物统计学确实是一个可行的替代其他广泛使用的生物统计学特征,因为99.95%以上的精度可以达到与该降维的方法和分类器的合适的选择。

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