Attendance System Based on Face Recognition System Using CNN-PCA Method and Real-time Camera

Edy Winarno, Imam Husni Al Amin, Herny Februariyanti, P. Adi, W. Hadikurniawati, M. T. Anwar
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引用次数: 38

Abstract

One of the developments in computer vision is the research on human face recognition. One of the implementations of the human face recognition system is used as an attendance system. The attendance system uses faces as objects to be detected and recognized as a person's identity and then stored as a face database. The process of matching face image data captured by the camera with face images that have been stored in the face database will result in face identification of the object faces captured by the camera. The face recognition-based attendance system in this study uses a hybrid feature extraction method using CNN-PCA (Convolutional Neural Network - Principal Component Analysis). This combination of methods is intended to produce a more accurate feature extraction method. The face recognition-based attendance system using this camera is very effective and efficient to further improve the accuracy of user data. This face recognition-based attendance system using this camera has very accurate data processing and high accuracy so that it can produce a system that is reliable and powerful to identify human faces in real-time.
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基于CNN-PCA和实时摄像头的人脸识别考勤系统
人脸识别是计算机视觉的发展方向之一。人脸识别系统的一个实现是作为考勤系统。考勤系统使用人脸作为对象进行检测和识别,作为一个人的身份,然后存储为人脸数据库。将摄像机捕获的人脸图像数据与存储在人脸数据库中的人脸图像进行匹配的过程,将对摄像机捕获的目标人脸进行人脸识别。本研究基于人脸识别的考勤系统采用了CNN-PCA(卷积神经网络-主成分分析)混合特征提取方法。这种方法的组合旨在产生更准确的特征提取方法。采用该摄像头的基于人脸识别的考勤系统非常有效和高效,进一步提高了用户数据的准确性。基于人脸识别的考勤系统采用该摄像头,数据处理非常准确,准确率高,可以产生一个可靠、功能强大的实时人脸识别系统。
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