DESIGN OF BIOMETRIC PROTECTION AUTHENTIFICATION SYSTEM BASED ON K-AVERAGE METHOD

Yaroslav Voznyi, Mariia Nazarkevych, V. Hrytsyk, N. Lotoshynska, Bohdana Havrysh
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引用次数: 1

Abstract

The method of biometric identification, designed to ensure the protection of confidential information, is considered. The method of classification of biometric prints by means of machine learning is offered. One of the variants of the solution of the problem of identification of biometric images on the basis of the k-means algorithm is given. Marked data samples were created for learning and testing processes. Biometric fingerprint data were used to establish identity. A new fingerprint scan that belongs to a particular person is compared to the data stored for that person. If the measurements match, the statement that the person has been identified is true. Experimental results indicate that the k-means method is a promising approach to the classification of fingerprints. The development of biometrics leads to the creation of security systems with a better degree of recognition and with fewer errors than the security system on traditional media. Machine learning was performed using a number of samples from a known biometric database, and verification / testing was performed with samples from the same database that were not included in the training data set. Biometric fingerprint data based on the freely available NIST Special Database 302 were used to establish identity, and the learning outcomes were shown. A new fingerprint scan that belongs to a particular person is compared to the data stored for that person. If the measurements match, the statement that the person has been identified is true. The machine learning system is built on a modular basis, by forming combinations of individual modules scikit-learn library in a python environment.
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基于k -平均法的生物识别防护认证系统设计
考虑采用生物特征识别的方法,以确保机密信息的保护。提出了一种基于机器学习的生物特征指纹分类方法。给出了基于k-均值算法的生物特征图像识别问题的一种解决方案。为学习和测试过程创建了标记的数据样本。使用生物特征指纹数据确定身份。一个新的指纹扫描属于一个特定的人,与该人存储的数据进行比较。如果测量结果相匹配,那么这个人已经被识别出来的说法是正确的。实验结果表明,k-均值方法是一种很有前途的指纹分类方法。生物识别技术的发展导致了比传统媒体上的安全系统具有更高识别程度和更少错误的安全系统的创建。使用来自已知生物识别数据库的大量样本进行机器学习,并使用来自同一数据库的未包含在训练数据集中的样本进行验证/测试。基于免费的NIST特殊数据库302的生物特征指纹数据被用来建立身份,并显示学习结果。一个新的指纹扫描属于一个特定的人,与该人存储的数据进行比较。如果测量结果相匹配,那么这个人已经被识别出来的说法是正确的。机器学习系统建立在模块化的基础上,通过在python环境中形成单个模块scikit-learn库的组合。
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