基于卷积神经网络的人脸识别家庭安防系统设计

Lidya Nabila, W. Priharti, Istiqomah
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引用次数: 0

摘要

家庭安防系统需要具有良好的准确性和效率来控制门禁系统的进出,以便准确地识别进入家中的人。家庭安全通常使用钥匙开门,由于几个因素,使安全性低。人们研究了各种人脸识别方法,以确定最准确的方法来识别谁可以进入房子。本研究采用Haar Cascade和CNN(卷积神经网络)方法进行人脸检测,并对5类可以进入房屋的家庭成员进行分类。根据分析结果,本研究的CNN模型使用了64x64的输入大小,0.001的学习率值,3x3的滤波器大小,10个epoch, 1200个训练数据,每类240个数据,150个测试数据,每类30个数据。分类过程在识别房屋家庭成员方面的准确率达到99%,因此可以打开门。
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Design of Home Security System Using Face Recognition with Convolutional Neural Network Method
Home security system with good accuracy and efficiency in controlling access to the door system is needed in order to identify people who enter the house accurately. Home security conventionally uses a key to open the door, making security low due to several factors. Various face recognition methods has been studied to determine the most accurate method in identifying people who has access to the house. In this study, Haar Cascade and CNN (Convolutional Neural Network) method were applied to face detection and classify 5 class of family member that can access the house. Based on the results of the analysis, the CNN model in this study uses an 64x64 sizes of input, 0.001 learning rate value, 3x3 filter size, 10 number of epochs, 1200 training data with 240 data for each class, and 150 testing data with 30 data for each class. The classification process yields the accuracy of 99% in identifying the family member of the house, hence giving access to open the door.
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