We present the improved network architecture, data augmentation, and training strategies for the Webface track and Insightface/Glint360K track of the masked face recognition challenge of ICCV2021. One of the key goals is to have a balanced performance of masked and standard face recognition. In order to prevent the overfitting for the masked face recognition, we control the total number of masked faces by not more than 10\% of the total face recognition in the training dataset. We propose a few key changes to the face recognition network including a new stem unit, drop block, face detection and alignment using YOLO5Face, feature concatenation, a cycle cosine learning rate, etc. With this strategy, we achieve good and balanced performance for both masked and standard face recognition.
翻译:我们提出了改进的网络结构、数据扩充和培训战略,用于Webface轨道和Insightface/Glint360K轨道的ICV2021号蒙面识别挑战。主要目标之一是平衡地发挥蒙面识别和标准面识别的功能。为了防止遮面识别过度,我们在培训数据集中以不超过10英寸的面部识别总量来控制蒙面脸的总量。我们建议对面识别网络进行一些关键改动,包括使用YOLO5Face、特征拼凑、循环连结学习率等方法对面部识别和校正进行新的干部、滴块、面部检测和校正。有了这一战略,我们就可以在蒙面识别和标准面部识别两方面实现良好和平衡的绩效。