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The Research of Chinese Ethnical Face Recognition Based on Deep Learning

机译:基于深度学习的中国人脸识别研究

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摘要

Face recognition emerged in the seventies. With the introduction of deep learning methods, especially the convolution neural networks (CNNs), more and more traditional machine learning techniques have been recently superseded by them. In a multi-ethnic country like China, the study for Chinese ethnical face recognition (CEFR) has practical demands and applications. In this paper, we provide a brief of popular face recognition procedure based on deep learning method firstly. Then, as lacking of the corresponding dataset, we construct a collection of Chinese ethnical face images (CCEFI) including Han, Uygur, Tibetan and Mongolian. Based on multi-task cascaded convolution networks (MTCNN) [14] and residual networks (ResNets) [11,12], our proposed model can achieve promising results for face detection and classification. Specifically, the average precision reaches 75% on CCEFI self-draft. Experimental results indicate that our model is able to detect the face in some constrained environments and distinguish its ethnical category. Meanwhile, the dataset established by us would be a useful dataset for relevant work.
机译:人脸识别出现于七十年代。随着深度学习方法(尤其是卷积神经网络(CNN))的引入,近来越来越多的传统机器学习技术被它们所取代。在像中国这样的多民族国家,中国人脸识别研究(CEFR)具有实际的需求和应用。本文首先简要介绍了一种基于深度学习方法的流行人脸识别程序。然后,由于缺少相应的数据集,我们构建了包括汉族,维吾尔族,藏族和蒙古族在内的中国人脸图像(CCEFI)的集合。基于多任务级联卷积网络(MTCNN)[14]和残差网络(ResNets)[11,12],我们提出的模型可以为人脸检测和分类取得有希望的结果。具体而言,CCEFI自草稿的平均精度达到75%。实验结果表明,我们的模型能够在某些受限环境中检测面部并区分其种族类别。同时,我们建立的数据集将为相关工作提供有用的数据集。

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