基于深度残差神经网络的人脸图像年龄分类

Raya Rahadian, S. Suyanto
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引用次数: 7

摘要

计算机视觉的挑战之一是年龄分类。有很多方法可以根据人脸图像来判断一个人的年龄。卷积神经网络(CNN)具有较高的准确率,但不能用于多层。因此,将残差技术应用于卷积神经网络,称为残差神经网络。在本文中,一些残差网络应用于人脸图像的年龄分类,使用Adience数据集,该数据集有来自2,284个人的19,370张人脸图像,分为8个类别:0-2、4-6、8-13、15-20、25-32、38-43、48-53和60-100岁。观察了三种技术:周期学习率、数据增强和迁移学习。通过六个训练场景来选择最佳模型。实验结果表明,在224 × 224像素的图像上,通过数据增强、迁移学习和训练得到的最佳模型是Resnet34, F1平均得分为0.792。
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Deep Residual Neural Network for Age Classification with Face Image
One of the challenges in computer vision is age classification. There have been many methods used to classify someone age from the image of their faces. Convolutional neural network (CNN) gives a high accuracy but it cannot be used on many layers. Therefore, a residual technique is applied on convolutional neural network then named residual neural network. In this paper, some Residual Networks are applied to develop an age classification with face image using the Adience dataset that has 19,370 face images from 2,284 individuals grouped into eight categories: 0-2, 4-6, 8-13, 15-20, 25-32, 38-43, 48-53, and 60-100 years. Three techniques: cyclical learning rate, data augmentation, and transfer learning are observed. Six training scenarios are performed to select the best model. Experimental results show that Resnet34 is the best model with an average F1 score of 0.792 that is achieved by data augmentation, transfer learning, and trained on the image with size 224 x 224 pixels.
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