PyTorch Face Recognizer based on 'VGGFace2: A dataset for recognising faces across pose and age'.
This repo implements training and testing models, and feature extractor based on models for VGGFace2 [1].
Pretrained models for PyTorch are converted from Caffe models authors of [1] provide.
Dataset
To download VGGFace2 dataset, see authors' site.
Preprocessing images
Faces should be detected and cropped from images before face images are fed to this face recognizer(demo.py
).
There are several face detection programs based on MTCNN [3].
- PyTorch version: mtcnn-pytorch
- MXNet version: mxnet_mtcnn_face_detection
- Matlab version: MTCNN_face_detection_alignment
Pretrained models
The followings are PyTorch models converted from Caffe models authors of [1] provide.
arch_type | download link |
---|---|
resnet50_ft |
link |
senet50_ft |
link |
resnet50_scratch |
link |
senet50_scratch |
link |
Extracting features
Usage:
python demo.py extract <options>
Options
--arch_type
network architecture type (default:resnet50_ft
):resnet50_ft
ResNet-50 which are first pre-trained on MS1M, and then fine-tuned on VGGFace2senet50_ft
SE-ResNet-50 trained likeresnet50_ft
resnet50_scratch
ResNet-50 trained from scratch on VGGFace2senet50_scratch
SE-ResNet-50 trained likeresnet50_scratch
--weight_file
weight file converted from Caffe model(see here)--resume
checkpoint file used in feature extraction (default: None). If set,--weight_file
is ignored.--dataset_dir
dataset directory--feature_dir
directory where extracted features are saved--test_img_list_file
image file for which features are extracted--log_file
log file--meta_file
Meta information file for VGGFace2,identity_meta.csv
in Meta.tar.gz--batch_size
batch size (default: 32)--gpu
GPU devide id (default: 0)--workers
number of data loading workers (default: 4)--horizontal_flip
horizontally flip images specified in--test_img_list_file
Testing
Usage:
python demo.py test <options>
Options
--arch_type
network architecture type (default:resnet50_ft
):resnet50_ft
ResNet-50 which are first pre-trained on MS1M, and then fine-tuned on VGGFace2senet50_ft
SE-ResNet-50 trained likeresnet50_ft
resnet50_scratch
ResNet-50 trained from scratch on VGGFace2senet50_scratch
SE-ResNet-50 trained likeresnet50_scratch
--weight_file
weight file converted from Caffe model(see here)--resume
checkpoint file used in test (default: None). If set,--weight_file
is ignored.--dataset_dir
dataset directory--test_img_list_file
text file containing image files used for validation, test or feature extraction--log_file
log file--meta_file
Meta information file for VGGFace2,identity_meta.csv
in Meta.tar.gz--batch_size
batch size (default: 32)--gpu
GPU devide id (default: 0)--workers
number of data loading workers (default: 4)
Training
Usage:
python demo.py train <options>
Options
--arch_type
network architecture type (default:resnet50_ft
):resnet50_ft
ResNet-50 which are first pre-trained on MS1M, and then fine-tuned on VGGFace2senet50_ft
SE-ResNet-50 trained likeresnet50_ft
resnet50_scratch
ResNet-50 trained from scratch on VGGFace2senet50_scratch
SE-ResNet-50 trained likeresnet50_scratch
--weight_file
weight file converted from Caffe model(see here), and used for fine-tuning--resume
checkpoint file used to resume training (default: None). If set,--weight_file
is ignored.--dataset_dir
dataset directory--train_img_list_file
text file containing image files used for training--test_img_list_file
text file containing image files used for validation, test or feature extraction--log_file
log file--meta_file
Meta information file for VGGFace2,identity_meta.csv
in Meta.tar.gz--checkpoint_dir
checkpoint output directory--config
number of settings and hyperparameters used in training--batch_size
batch size (default: 32)--gpu
GPU devide id (default: 0)--workers
number of data loading workers (default: 4)
Note
VGG-Face dataset, described in [2], is not planned to be supported in this repo. If you are interested in models for VGG-Face, see keras-vggface.
References
-
ZQ. Cao, L. Shen, W. Xie, O. M. Parkhi, A. Zisserman, VGGFace2: A dataset for recognising faces across pose and age, 2018.
site, arXiv -
Parkhi, O. M. and Vedaldi, A. and Zisserman, A., Deep Face Recognition, British Machine Vision Conference, 2015. site
-
K. Zhang and Z. Zhang and Z. Li and Y. Qiao, Joint Face Detection and Alignment Using Multitask Cascaded Convolutional Networks, IEEE Signal Processing Letters, 2016. arXiv