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PERSONAL IDENTIFICATION BASED ON THE INDIVIDUAL SONOGRAPHIC PROPERTIES OF THE AURICLE USING CEPSTRAL ANALYSIS AND BAYES FORMULA

机译:基于使用抗康林分析和贝叶斯公式的耳廓的个体超声特性的个人识别

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摘要

A method of personality recognition by echographic parameters of the human ear is developed based on the naive Bayes classifier in the two following modes: the biometric identification (EER = 0.0053) and the biometric authentication (FRR = 0.0002 at FAR = 0.0001), respectively. A device is developed for recording the biometric characteristics of the external ear, and a set of echographic data is collected from the external ears of 75 subjects. The spectral and cepstral characteristics of the signals reflected from the ear canal are used as biometric parameters. Several window functions for constructing spectra and cepstrograms are considered. It is established that more than 90% of "cepstral" features have a weak correlation, which allows us to use the naive Bayesian classifier and to obtain highly accurate results of user recognition at the same time. An advantage of the Bayesian classification is the possibility of the robust fast learning of the identification system.
机译:基于以下模式的朴实贝叶斯分类器开发了人耳的回声参数的个性识别方法:生物识别(EER = 0.0053)和生物认证(FRR = 0.0002,远定= 0.0001), 分别。 开发了一种用于记录外耳的生物测定特性的装置,并且从75个受试者的外耳上收集一组回声图。 从耳道反射的信号的光谱和抗焦度特性用作生物识别参数。 考虑了用于构建光谱和剖宫展的几个窗口功能。 建立超过90%的“颅骨”特征具有较弱的相关性,这使我们可以使用Naive Bayesian分类器并同时获得用户识别的高度准确的结果。 贝叶斯分类的一个优点是识别系统的强大快速学习的可能性。

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