基于 VGGFace-16 和各种分类器的人脸识别系统的设计与分析

Duaa Faris Abdlkader, Mayada Faris Ghanim
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摘要

本研究提出了一种基于不同分类器的人脸识别系统,可处理各种人脸位置。建议的系统通过 VGG-Face-16 深度神经网络提取特征,该网络只提取输入图像的基本特征,从而改进了识别步骤并提高了算法效率,而识别则涉及支持向量机(SVM)分类器中的径向基函数,并评估了系统的性能。此外,该系统还通过使用其他分类器进行设计和实施;它们是 K-neareste2 neighbor (KNN) 分类器、逻辑回归 (LR)、梯度提升 (XGBoost)、决策树分类器 (DT) 和 Naive Bayes 分类器 (NB)。我们用四个人脸数据库对所提出的算法进行了测试:AT&T、PINs Face、线性摩擦焊接(LFW)和真实数据库。数据库分为两组:一组包含一定比例的图像,用于训练;另一组包含一定比例的图像(剩余部分),用于测试。结果表明,在使用小型、中型和大型数据库的情况下,SVM 中的 RBF 分类具有最高的识别率;在 AT&T 和 Real 数据库中为 100%,而在使用大型数据库时,其效率似乎较低,在 PINs 数据库中为 96%,在 LFW 数据库中为 60.1%。
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Design and analysis of face recognition system based on VGGFace-16 with various classifiers
This research presents a face recognition system based on different classifiers that deal with various face positions. The proposed system involves the extraction of features through the VGG-Face-16 deep neural network, which only extracts essential features of input images, leading to an improved recognition step and enhanced algorithm efficiency, while the recognition involves the radial basis function in support vector machine (SVM) classifier and evaluate the performance of the system. Also, the system is designed and implemented later by using other classifiers; they are K-neareste2 neighbour (KNN) classifiers, logistic regression (LR), gradient boosting (XGBoost), decision tree classifier (DT) and Naive Bayes classifier (NB). The proposed algorithm was tested with the four face databases: AT&T, PINs Face, linear friction welding (LFW) and real database. The database was divided into two groups: One contains a percentage of images that are used for training and the second contains a percentage of images (remainder) which was used for testing. The results show that the classification by RBF in SVM has the highest recognition rate in the case of using small, medium and large databases; it was 100% in AT&T and Real database, while its efficiency appears to be lower when using large-size databases whereas it is 96% in PINs database and 60.1% in LFW database.
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