Using Synthetic Images with Deep Convolutional Neural Networks for Racial Face Recognition

Yen-lun Chen, Yi-Leh Wu, Cheng-Yuan Tang
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Abstract

In the past, people usually employ the facial feature extraction and shallow learners such as decision trees, SVM, Naive Bayes, etc. to classify faces of different races. Deep learning usually takes lots of time to train. But with the advances in hardware and new algorithm proposed, the training time problem is gradually alleviated. The deep convolutional neural networks have good effect on images classification. In this paper, we use the deep convolutional neural networks to try to solve the problem of classification faces of different racial origin. Because the convolutional neural networks usually require a huge amount of data for training for good performance, such training set of real racial faces is not available to us. As a result of small set of real racial faces, this study proposes to incorporate synthetic facial images in our training set to sufficiently increase the size of the training set. To the best of our knowledge, this study is the first to propose to incorporate synthetic racial faces to train a deep convolutional neural network to classify real racial faces. We compare the performance of only employ synthetic facial images and mixtures of synthetic and real facial images in the training set. Our experiments show that training with only the real facial images (2,500 images) can achieve 91.25% accuracy in classifying faces of three different race origins. However, the classification when training with a mixture of 2,500 real facial images and 15,000 synthetic facial images can be further improved to 98.5% in accuracy.
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基于深度卷积神经网络的合成图像种族人脸识别
过去,人们通常采用人脸特征提取和决策树、SVM、朴素贝叶斯等浅层学习器对不同种族的人脸进行分类。深度学习通常需要大量的训练时间。但随着硬件的进步和新算法的提出,训练时间问题逐渐得到缓解。深度卷积神经网络在图像分类方面具有良好的效果。本文尝试使用深度卷积神经网络来解决不同种族的人脸分类问题。由于卷积神经网络通常需要大量的数据进行训练才能获得良好的性能,我们无法获得这样的真实种族面孔的训练集。由于真实种族的人脸集合较少,本研究提出在我们的训练集中加入合成人脸图像,以充分增加训练集的规模。据我们所知,这项研究是第一个提出结合合成种族面孔来训练深度卷积神经网络来分类真实种族面孔的研究。我们比较了在训练集中只使用合成人脸图像和合成人脸图像与真实人脸图像混合的性能。我们的实验表明,仅使用真实的人脸图像(2500张图像)进行训练,对三个不同种族的人脸进行分类,准确率达到91.25%。然而,当使用2500张真实人脸图像和15000张合成人脸图像混合训练时,分类的准确率可以进一步提高到98.5%。
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