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| Introduction | Installation | Get Started | Tutorials | Model List | Notes |
MindFace mainly has the following features.
-
Unified Application Programming Interface
MindFace provides a unified application programming interface for face recognition and detection by decoupling the models, so that the model can be called directly using the MindFace APIs, which greatly improves the ease of building algorithms for users
-
Strong extensibility
MindFace currently supports face recognition and detection, based on the unified APIs. MindFace is highly scalable, it can support lots of backbones, datasets, and loss functions. What's more, MindFace also supports many platforms, including CPU/GPU/Ascend.
The MindSpore implementation of ArcFace and has achieved great performance. We implemented three versions based on ResNet and MobileNet to meet different needs. Detailed results are shown in the table below.
Datasets | Backbone | lfw | cfp_fp | agedb_30 | calfw | cplfw |
---|---|---|---|---|---|---|
CASIA | mobilefacenet-0.45g | 0.98483+-0.00425 | 0.86843+-0.01838 | 0.90133+-0.02118 | 0.90917+-0.01294 | 0.81217+-0.02232 |
CASIA | r50 | 0.98667+-0.00435 | 0.90357+-0.01300 | 0.91750+-0.02277 | 0.92033+-0.01122 | 0.83667+-0.01719 |
CASIA | r100 | 0.98950+-0.00366 | 0.90943+-0.01300 | 0.91833+-0.01655 | 0.92433+-0.01017 | 0.84967+-0.01904 |
MS1MV2 | mobilefacenet-0.45g | 0.98700+-0.00364 | 0.88214+-0.01493 | 0.90950+-0.02076 | 0.91750+-0.01088 | 0.82633+-0.02014 |
MS1MV2 | r50 | 0.99767+-0.00260 | 0.97186+-0.00652 | 0.97783+-0.00869 | 0.96067+-0.01121 | 0.92033+-0.01732 |
MS1MV2 | r100 | 0.99383+-0.00334 | 0.96800+-0.01042 | 0.93767+-0.01724 | 0.93267+-0.01327 | 0.89150+-0.01763 |
For face detection, we choose resnet50 and mobilenet0.25 as the backbone, retinaface as the model architecture to achieve efficient performance of face detection. Detailed results are shown in the table below.
Dataset | Backbone | Easy | Middle | Hard |
---|---|---|---|---|
WiderFace | mobileNet0.25 | 91.60% | 89.50% | 82.39% |
WiderFace | ResNet50 | 95.81% | 94.89% | 90.10% |
- mindspore_gpu==1.8.1
- numpy==1.21.6
- opencv_python==4.6.0.66
- scipy==1.7.3
- pyyaml>=5.3
- scikit-learn==1.1.2
- Pillow==9.2.0
- matplotlib==3.6.0
- easydict==1.9
To install the dependency, please run
pip install -r requirements.txt
MindSpore can be easily installed by following the official instruction where you can select your hardware platform for the best fit. To run in distributed mode, openmpi is required to install.
MindFace can be installed with pip.
pip install mindface
To install MindFace from source, please run,
# Clone the MindFace repository.
git clone https://github.com/mindspore-lab/mindface.git
cd mindface
# Install
python setup.py install
We provide tutorials for the recognition and detection task.
- Get started
- Learn about recognition configs
- Learn to reproduce the eval result and inference with a pretrained model
- Learn about how to create dataset
- Learn about how to train/finetune a pretrained model
- Learn about how to use the loss function
- Learn about how to create model and custom model
- Learn about detection configs
- Inference with a pretrained detection model
- Finetune a pretrained detection model on WiderFace
The mindspore implementation of ArcFace has achieved great performance. We implemented three versions based on ResNet, MobileNet and vit to meet different needs. Detailed results are shown in the table below.
Datasets | Backbone | lfw | cfp_fp | agedb_30 | calfw | cplfw |
---|---|---|---|---|---|---|
CASIA | mobilefacenet-0.45g | 0.98483+-0.00425 | 0.86843+-0.01838 | 0.90133+-0.02118 | 0.90917+-0.01294 | 0.81217+-0.02232 |
CASIA | r50 | 0.98667+-0.00435 | 0.90357+-0.01300 | 0.91750+-0.02277 | 0.92033+-0.01122 | 0.83667+-0.01719 |
CASIA | r100 | 0.98950+-0.00366 | 0.90943+-0.01300 | 0.91833+-0.01655 | 0.92433+-0.01017 | 0.84967+-0.01904 |
CASIA | vit-t | 0.98400+-0.00704 | 0.83229+-0.01877 | 0.87283+-0.02468 | 0.90667+-0.00934 | 0.80700+-0.01767 |
CASIA | vit-s | 0.98550+-0.00806 | 0.85557+-0.01617 | 0.87850+-0.02194 | 0.91083+-0.00876 | 0.82500+-0.01685 |
CASIA | vit-b | 0.98333+-0.00553 | 0.85829+-0.01836 | 0.87417+-0.01838 | 0.90800+-0.00968 | 0.81400+-0.02236 |
CASIA | vit-l | 0.97600+-0.00898 | 0.84543+-0.01718 | 0.85317+-0.01411 | 0.89733+-0.00910 | 0.79550+-0.01648 |
MS1MV2 | mobilefacenet-0.45g | 0.98700+-0.00364 | 0.88214+-0.01493 | 0.90950+-0.02076 | 0.91750+-0.01088 | 0.82633+-0.02014 |
MS1MV2 | r50 | 0.99767+-0.00260 | 0.97186+-0.00652 | 0.97783+-0.00869 | 0.96067+-0.01121 | 0.92033+-0.01732 |
MS1MV2 | r100 | 0.99383+-0.00334 | 0.96800+-0.01042 | 0.93767+-0.01724 | 0.93267+-0.01327 | 0.89150+-0.01763 |
MS1MV2 | vit-t | 0.99717+-0.00279 | 0.92714+-0.01389 | 0.96717+-0.00727 | 0.95600+-0.01198 | 0.89950+-0.01291 |
MS1MV2 | vit-s | 0.99767+-0.00260 | 0.95771+-0.01058 | 0.97617+-0.00972 | 0.95800+-0.01142 | 0.91267+-0.01104 |
MS1MV2 | vit-b | 0.99817+-0.00252 | 0.94200+-0.01296 | 0.97517+-0.00858 | 0.96000+-0.01179 | 0.90967+-0.01152 |
MS1MV2 | vit-l | 0.99750+-0.00291 | 0.93714+-0.01498 | 0.96483+-0.01031 | 0.95817+-0.01158 | 0.90450+-0.01062 |
For Face detection, We choose resnet50 and mobilenet0.25 as the backbone, retinaface as the model architecture to achieve efficient performance of face detection. Detailed results are shown in the table below.
backbone | Easy | Medium | Hard |
---|---|---|---|
mobileNet0.25 | 91.60% | 89.50% | 82.39% |
ResNet50 | 95.81% | 94.89% | 90.10% |
This project is released under the Apache License 2.0.
The dynamic version is still under development, if you find any issue or have an idea on new features, please don't hesitate to contact us via issue.
MindSpore is an open source project that welcome any contribution and feedback. We wish that the toolbox and benchmark could serve the growing research community by providing a flexible as well as standardized toolkit to reimplement existing methods and develop their own new computer vision methods.
If you find MindFace useful in your research, please consider citing the following related papers:
@misc{MindFace 2022,
title={{mindface}:mindface for face recognition and detection},
author={mindface},
howpublished = {\url{https://github.com/mindspore-lab/mindface/}},
year={2022}
}
MindFace is mainly maintained by the Cross-Media Intelligent Computing (CMIC) Laboratory, University of Science and Technology of China (USTC), and cooperated with Huawei Technologies Co., Ltd.
The research topics of CMIC include multimedia computing, multi-modal information perception, cognition and synthesis.
CMIC has published more than 200 journal articles and conference papers, including TPAMI, TIP, TMM, TASLP, TCSVT, TCYB, TITS, TOMM, TCDS, NeurIPS, ACL, CVPR, ICCV, MM, ICLR, SIGGRAPH, VR, AAAI, IJCAI.
CMIC has received 6 best paper awards from premier conferences, including CVPR MAVOC, ICCV MFR, ICME, FG.
CMIC has won 24 Grand Challenge Champion Awards from premier conferences, including CVPR, ICCV, MM, ECCV, AAAI, ICME.
- We have created our official repo about face research based on MindSpore.
- MindFace supports recognition and detection task.
Main contributors:
- Jun Yu,
harryjun[at]ustc.edu.cn
- Guochen xie,
xiegc[at]mail.ustc.edu.cn
- Shenshen Du,
dushens[at]mail.ustc.edu.cn
- Zhongpeng Cai,
czp_2402242823[at]mail.ustc.edu.cn
- Peng He,
hp0618[at]mail.ustc.edu.cn
- Liwen Zhang,
zlw1113[at]mail.ustc.edu.cn
- Hao Chang,
changhaoustc[at]mail.ustc.edu.cn
- Mohan Jing,
[email protected]
- Haoxiang Shi,
[email protected]
- Keda Lu,
[email protected]
- Pengwei Li,
[email protected]