基于卷积神经网络的人脸识别与性别分类

M. Berbar
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引用次数: 0

摘要

深度卷积神经网络的计算能力使得在许多安全问题和计算机视觉问题上对面部和面部性别进行鲁棒分类成为可能。本文提出了两种卷积神经网络(CNN)人脸识别和人脸性别分类模型。该模型包括一个图像输入层,随后是卷积层、归一化层、激活层和最大池化层的三个块,以及三个完全连接的层。使用五个公开可用的人脸数据集评估了所提出的CNN解决方案的性能。两种灰度人脸数据集:Sheffield和at&t。三种颜色的人脸数据集,Faces94, Ferret和Celebrity face Images来自Kaggle。在Faces94、Ferret、Sheffield和AT&T数据集上实现的分类准确率在99.0%到100%之间,在Kaggle数据集上实现的分类准确率在93.6%到95.0%之间。提出的CNN可以处理和分类来自Faces94、Sheffield和AT&T数据集的32 × 32像素的小尺寸人脸图像,以及来自Ferret和Kaggle数据集的100 × 100像素的小尺寸人脸图像。实验结果表明,本文提出的CNN模型是人脸图像识别和人脸性别图像分类的有效解决方案。与几种最先进的方法相比,所提出的模型具有相当的准确性。关键词:人脸识别;面部性别分类;卷积神经网络;最大池化层,完全
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Faces Recognition and Facial Gender Classification using Convolutional Neural Network
Computational power in deep convolutional neural networks has made it possible to have robust classifiers for faces and facial gender for many security issues and computer vision problems. This paper proposes two convolutional neural network (CNN) models for face recognition and facial gender classification. The models consist of an image input layer, followed by three blocks of convolutional, normalization, activation, and max-pooling layers, and three fully connected layers. The performance of the proposed CNN solutions is evaluated using five publicly available face datasets. Two greyscale face datasets: Sheffield and AT & T. Three color face datasets, Faces94, Ferret, and Celebrity Face Images from Kaggle. The achieved classification accuracy ranged between 99.0% and 100% on the Faces94, Ferret, Sheffield, and AT&T datasets, and classification accuracy of 93.6% to 95.0% on the Kaggle dataset. The proposed CNN can process and classify a smallsize face image 32 × 32-pixel from the Faces94, Sheffield, and AT&T datasets and 100 × 100 pixels from the Ferret and Kaggle datasets. The obtained results prove that the proposed CNN models are an effective solution for face image recognition and facial gender image classification. The proposed model produces competitive accuracy compared to several state-of-the-art methods. Keywords— Face recognition; facial gender classification; convolutional neural network; max pooling layer, fully
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