基于卷积神经网络算法的人脸性别检测系统

Abdul Roid, I. Maurits
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引用次数: 0

摘要

随着当前技术的发展,对系统自动化的需求不断增加。其中一个进步是人脸识别的实现。相机的功能已经从仅仅捕捉图像或视频发展到能够处理生成的图像。面部图像包含了丰富的信息,其中之一就是个体的性别信息。为了获得这些信息,需要使用深度学习进行面部图像分类。在这篇科学论文中,作者使用Python编程语言实现卷积神经网络算法,并使用TensorFlow作为其框架。该研究旨在根据面部图像预测人类性别。本研究使用的数据集来自kaggle.com数据集提供商,由9600个男性面部数据和9600个女性面部数据组成。将数据分为训练集和测试集,训练数据占总可用数据的80%,测试数据占20%。模型训练过程分为15个epoch,每个epoch 768步。测试结果表明,卷积神经网络方法的验证准确率约为91%。开发的程序通过网络摄像头运行良好。
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HUMAN GENDER DETECTION SYSTEM BASED ON FACIAL IMAGE USING CONVOLUTIONAL NEURAL NETWORK ALGORITHM
The demand for system automation has been continuously increasing with the current technological developments. One of these advancements is in the implementation of face recognition. Camera capabilities have evolved from merely capturing images or videos to being able to process the resulting images. Facial images contain a wealth of information, one of which is the gender information of the individuals. To obtain this information, facial image classification using deep learning is required. In this scientific paper, the author utilizes the Convolutional Neural Network algorithm implemented with the Python programming language and employs TensorFlow as its framework. The research aims to predict human gender based on facial images. The dataset used in this study is obtained from the kaggle.com dataset provider, consisting of 9,600 male facial data and 9,600 female facial data. The data is divided into a training and testing set, with an 80% ratio for training data and a 20% ratio for testing data from the total available data. The model training process is performed for 15 epochs with 768 steps in each epoch. The testing results show that the Convolutional Neural Network method achieves a validation accuracy of approximately 91%. The developed program runs well through a webcam.
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