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Facial Ethnicity Recognition Based on Transfer Learning from Deep Convolutional Networks

机译:基于深度卷积网络转移学习的面部种族识别

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摘要

With the development of deep learning, computer face recognition has made significant progress. However, face ethnic characteristics information is rarely used in face recognition technology. The research of facial ethnicity recognition had not only been directly applied in daily life, but also avoided racial effects and improved model generalization performance. In the paper, we proposed a Chinese facial ethnicity recognition (CFER) model based on transfer learning from deep convolution networks. First, we collected 5 Chinese ethnic groups to build a face dataset containing ethnicity information; then we have applied CFER to recognize Chinese ethnicity characteristics and 10-fold cross validation method to estimate mainly the accuracy rate of the model. The average recognition rate of the model is 80.5%, meanwhile, the model also has good generalization performance. It's proved that deep learning method is feasible for facial ethnicity recognition.
机译:随着深度学习的发展,计算机人脸识别取得了长足的进步。但是,人脸种族特征信息很少用于人脸识别技术中。面部种族识别的研究不仅直接应用于日常生活中,而且避免了种族影响,提高了模型泛化性能。在本文中,我们提出了基于深度卷积网络的转移学习的中国面部种族识别(CFER)模型。首先,我们收集了5个中国种族来构建包含种族信息的人脸数据集;然后我们应用CFER来识别中国人的种族特征,并使用10倍交叉验证方法来主要估计模型的准确率。该模型的平均识别率为80.5%,同时该模型也具有良好的泛化性能。证明了深度学习方法对于面部种族识别是可行的。

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