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姚树婧, 张立言, 李星燃. 结合特征解耦和静动态联合图卷积网络的人脸属性识别[J]. 计算机辅助设计与图形学学报, 2022, 34(7): 1020-1027. DOI: 10.3724/SP.J.1089.2022.19065
引用本文: 姚树婧, 张立言, 李星燃. 结合特征解耦和静动态联合图卷积网络的人脸属性识别[J]. 计算机辅助设计与图形学学报, 2022, 34(7): 1020-1027. DOI: 10.3724/SP.J.1089.2022.19065
Yao Shujing, Zhang Liyan, Li Xingran. Facial Attributes Recognition Combined with Feature Decoupling and Static-Dynamic Joint Graph Convolutional Network[J]. Journal of Computer-Aided Design & Computer Graphics, 2022, 34(7): 1020-1027. DOI: 10.3724/SP.J.1089.2022.19065
Citation: Yao Shujing, Zhang Liyan, Li Xingran. Facial Attributes Recognition Combined with Feature Decoupling and Static-Dynamic Joint Graph Convolutional Network[J]. Journal of Computer-Aided Design & Computer Graphics, 2022, 34(7): 1020-1027. DOI: 10.3724/SP.J.1089.2022.19065

结合特征解耦和静动态联合图卷积网络的人脸属性识别

Facial Attributes Recognition Combined with Feature Decoupling and Static-Dynamic Joint Graph Convolutional Network

  • 摘要: 现有的人脸属性识别方法或采用属性分组的方式提取特征,或计算属性共现概率构造静态属性关系图.前者学习的属性间互补信息不充足,且无法确定组间属性的相关性和属性间的相关程度;后者在人脸图像出现偶然共现属性对时存在偏差,可能会降低模型的通用性.为解决上述问题,提出一种结合特征解耦和静动态联合图卷积网络的人脸属性识别方法.首先使用深度卷积神经网络ResNet-50提取包含属性表示信息的特征;然后设计特征解耦模块,学习得到每种属性对应的特定特征;最后联合属性关系的静态图和动态图,通过图卷积网络学习属性之间的相关性并使用一维卷积层识别人脸属性.在CelebA和LFWA数据集上进行验证,所提方法的平均准确率分别达到91.85%和88.17%,优于许多已有的方法.

     

    Abstract: The existing facial attributes recognition methods either use attributes grouping to extract features or calculate the attributes co-occurrence probability to construct static attributes relational graph.The former learns insufficient complementary information and it cannot determine the correlation of attributes between groups and the correlation degree between attributes.The latter may reduce the generality of the model due to the bias of occasional co-occurrence attributes pairs in face images.In order to solve the above problems,a facial attributes recognition method combined with feature decoupling and static-dynamic graph convolu-tional neural network is proposed.Firstly,deep convolutional neural network ResNet-50 is used to extract features containing attributes representation information.Then,a feature decoupling module is designed to learn the specific features corresponding to each attribute.Finally,the static graph and dynamic graph are combined to learn the correlation between attributes,and the one-dimensional convolution layer is used to recognize facial attributes.The average accuracy on CelebA and LFWA datasets reach 91.85%and 88.17%,respectively,which are superior to other state-of-the-art methods.

     

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