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Repository Details

CurricularFace(CVPR2020)

CurricularFace: Adaptive Curriculum Learning Loss for Deep Face Recognition

Yuge Huang, Yuhan Wang, Ying Tai, Xiaoming Liu, Pengcheng Shen, Shaoxin Li, Jilin Li, Feiyue Huang

This repository is the official PyTorch implementation of paper CurricularFace: Adaptive Curriculum Learning Loss for Deep Face Recognition. (The work has been accepted by CVPR2020).

We have released a training framework for face recognition, please refer to the details at TFace.

Main requirements

  • torch == 1.1.0
  • torchvision == 0.3.0
  • tensorboardX == 1.7
  • bcolz == 1.2.1
  • Python 3

Usage

# To train the model:
sh train.sh
# To evaluate the model:
(1)please first download the val data in https://github.com/ZhaoJ9014/face.evoLVe.PyTorch.
(2)set the checkpoint dir in config.py
sh evaluate.sh

You can change the experimental setting by simply modifying the parameter in the config.py

Model

The IR101 pretrained model can be downloaded here. [Baidu Cloud](link: https://pan.baidu.com/s/1bu-uocgSyFHf5pOPShhTyA passwd: 5qa0), Google Drive

Result

The results of the released pretrained model are as follows:

Data LFW CFP-FP CPLFW AGEDB CALFW IJBB (TPR@FAR=1e-4) IJBC (TPR@FAR=1e-4)
Result 99.80 98.36 93.13 98.37 96.05 94.86 96.15

The results are slightly different from the results in the paper because we replaced DataParallel with DistributedDataParallel and retrained the model.

Citing this repository

If you find this code useful in your research, please consider citing us:

@article{huang2020curricularface,
	title={CurricularFace: Adaptive Curriculum Learning Loss for Deep Face Recognition},
	author={Yuge Huang and Yuhan Wang and Ying Tai and  Xiaoming Liu and Pengcheng Shen and Shaoxin Li and Jilin Li, Feiyue Huang},
	booktitle={CVPR},
	pages={1--8},
	year={2020}
}

Contacts

If you have any questions about our work, please do not hesitate to contact us by emails. Yuge Huang: [email protected] Ying Tai: [email protected]