SAS-HRM: Secure Authentication System for Human Resource Management

Reem M. Abdullah, Sundos A. Hameed Alazawi, Phaklen Ehkan
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引用次数: 0

Abstract

To guarantee data confidentiality and information sensitivity, human resource management requires secure systems. In the field of authorization and dependability in recognizing and identifying persons, facial recognition has grown in importance. In this research, a secure authentication system is proposed based on biometric aspects of the user's face and identifying it using the CNN classification model is provided to give access to human resource management and update data. The system is divided into four major stages: First, set up the system environment, beginning with smart cards, card readers, Arduino, and so on. Second, after undergoing pre-treatment steps, the facial characteristics are extracted using LDA. Third, create a high-accuracy CNN model to recognize and classify the user's face among the system's users. Finally, the user is allowed to enter the system and update his information. When compared to the accuracy of classification using machine learning techniques with a CNN proposed model, the accuracy of the model with LDA was up to 100%. K-NN has 91%, while TD has 94%.
SAS-HRM:人力资源管理安全认证系统
为了保证数据的保密性和信息的敏感性,人力资源管理需要安全的系统。在识别和识别人员的授权和可靠性方面,面部识别越来越重要。在本研究中,提出了一种基于用户面部生物特征的安全认证系统,并使用CNN分类模型对其进行识别,从而访问人力资源管理和更新数据。本系统分为四个主要阶段:首先搭建系统环境,从智能卡、读卡器、Arduino等入手。其次,在经过预处理步骤后,使用LDA提取面部特征。第三,创建一个高精度的CNN模型,在系统的用户中对用户的面部进行识别和分类。最后,允许用户进入系统并更新他的信息。与使用机器学习技术的分类准确率与CNN提出的模型相比,LDA模型的准确率高达100%。K-NN有91%,TD有94%。
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