Development of Real-Time Face Recognition for Smart Door Lock Security System using Haar Cascade and OpenCV LBPH Face Recognizer

Daniel Anando Wangean, Sinjiru Setyawan, F. I. Maulana, Gusti Pangestu, C. Huda
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Abstract

Face recognition is a technology that is widely used in security systems. In a door security system, facial recognition can be used to open the door simply by recognizing the face of the door owner. This study aims to develop a real-time facial recognition system for smart locking doors using Haar Cascade and OpenCV LBPH Face Recognizer. The purpose of this project is creating security system to limit people who can access a room. The Haar Cascade method is used to detect faces in images, while the OpenCV LBPH Face Recognizer is used to recognize detected faces. This system was developed using the Python programming language and the OpenCV library. The test results show that this system can detect and recognize faces with an accuracy of 62.7% with our dataset and can be improved by adding more datasets and using deep learning algorithms to train the recognizer model. Thus, the developed real-time facial recognition system can be used as a smart locking door security solution with high accuracy.
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基于Haar级联和OpenCV LBPH人脸识别器的智能门锁安全系统实时人脸识别开发
人脸识别是一项广泛应用于安防系统的技术。在门安全系统中,面部识别可以通过简单地识别门主人的脸来打开门。本研究旨在利用Haar级联和OpenCV LBPH人脸识别器开发智能门锁的实时人脸识别系统。这个项目的目的是创建安全系统来限制可以进入房间的人。使用Haar级联方法检测图像中的人脸,使用OpenCV LBPH人脸识别器对检测到的人脸进行识别。本系统是使用Python编程语言和OpenCV库开发的。测试结果表明,该系统能够以62.7%的准确率检测和识别人脸,并且可以通过增加更多的数据集和使用深度学习算法来训练识别器模型来提高识别精度。因此,所开发的实时人脸识别系统可以作为一种高精度的智能门锁安全解决方案。
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