Realization of Computer Vision System for Biometric Identification of Personality

L. Chernenkaya, E. N. Desyatirikova, A. V. Rechinskii
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引用次数: 1

Abstract

This paper discusses issues dedicated to the person’s identity defining. Biometric identification of a person, contrary to established stereotypes, is required not only in criminology, where it has been used initially. Methods applied for persons’ identification differ in the complexity of implementation, the time needed to receive a result (system response) after the identification procedure, and, most importantly, the reliability of obtained results. Biometric identification methods provide the maximal authenticity, and are based on the recognition of biometric data of a particular person, which include physiological data (static) and behavioral data (recognized in dynamics). Objectives of the research are: choice of the identification method based on the conducted analysis that is the most applicable for operational person’s identification within given restrictions, and the description of the biometric identification system realization based on computer vision. The development of the simple and operative system is described, and results are demonstrated.
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人格生物特征识别计算机视觉系统的实现
这篇论文讨论了关于人的身份定义的问题。与既定的刻板印象相反,不仅在犯罪学中需要对一个人进行生物特征识别,在犯罪学中已经最初使用了这种识别。用于人员身份识别的方法在实施的复杂性,识别程序后接收结果(系统响应)所需的时间,以及最重要的是所获得结果的可靠性方面有所不同。生物特征识别方法提供了最大的真实性,并且基于对特定人的生物特征数据的识别,其中包括生理数据(静态)和行为数据(动态识别)。研究的目的是:在给定的限制条件下,根据所进行的分析选择最适用于操作人员识别的识别方法,描述基于计算机视觉的生物特征识别系统实现。介绍了该系统的开发过程,并对结果进行了验证。
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