In the field of face recognition, a model learns to distinguish millions of face images with fewer dimensional embedding features, and such vast information may not be properly encoded in the conventional model with a single branch. We propose a novel face-recognition-specialized architecture called GroupFace that utilizes multiple group-aware representations, simultaneously, to improve the quality of the embedding feature. The proposed method provides self-distributed labels that balance the number of samples belonging to each group without additional human annotations, and learns the group-aware representations that can narrow down the search space of the target identity. We prove the effectiveness of the proposed method by showing extensive ablation studies and visualizations. All the components of the proposed method can be trained in an end-to-end manner with a marginal increase of computational complexity. Finally, the proposed method achieves the state-of-the-art results with significant improvements in 1:1 face verification and 1:N face identification tasks on the following public datasets: LFW, YTF, CALFW, CPLFW, CFP, AgeDB-30, MegaFace, IJB-B and IJB-C.
翻译:在面部识别领域,一个模型学会区分成百万个面部图像,其维度嵌入特征较少,而这种大量信息可能无法适当地用单一分支在常规模型中进行编码。我们提议建立一个名为群面识别专门结构的新颖结构,称为群面识别专门结构,同时利用多个群度显示,以提高嵌入特征的质量。拟议方法提供自我分配标签,平衡属于每个组群的样本数量,而没有额外的人文说明,并学习群体觉表现,从而可以缩小目标身份的搜索空间。我们通过展示广泛的反动研究和可视化,证明拟议方法的有效性。拟议方法的所有组成部分都可以以端到端方式培训,而计算复杂性则略有增加。最后,拟议方法取得了最新结果,在1:1面部核查和1:N上作了重大改进,并在以下公共数据集上完成了识别任务:LFW、YTF、CLFW、CPLFW、CPLFW、CFP、CFP、AID-30、MGAFAF-B、IJB-B。