Skip to content

CVI-SZU/ME-GraphAU

Repository files navigation

PWC PWC

📢 News

  • 12/11/2022 We released an OpenGraphAU or OpenGraphAU version of our code and models trained on a large-scale hybrid dataset of over 2,000k images and 41 action unit categories.

Learning Multi-dimensional Edge Feature-based AU Relation Graph for Facial Action Unit Recognition

This is an official release of the paper

"Learning Multi-dimensional Edge Feature-based AU Relation Graph for Facial Action Unit Recognition", IJCAI-ECAI 2022

[Paper] [Project]

The main novelty of the proposed approach in comparison to pre-defined AU graphs and deep learned facial display-specific graphs are illustrated in this figure.

demo-.mp4

🔧 Requirements

  • Python 3

  • PyTorch

  • Check the required python packages in requirements.txt.

pip install -r requirements.txt

Data and Data Prepareing Tools

The Datasets we used:

We provide tools for prepareing data in tool/. After Downloading raw data files, you can use these tools to process them, aligning with our protocals. More details have been described in tool/README.md.

Training with ImageNet pre-trained models

Make sure that you download the ImageNet pre-trained models to checkpoints/ (or you alter the checkpoint path setting in models/resnet.py or models/swin_transformer.py)

The download links of pre-trained models are in checkpoints/checkpoints.txt

Thanks to the offical Pytorch and Swin Transformer

Training and Testing

  • to train the first stage of our approach (ResNet-50) on BP4D Dataset, run:
python train_stage1.py --dataset BP4D --arc resnet50 --exp-name resnet50_first_stage -b 64 -lr 0.0001 --fold 1 
  • to train the second stage of our approach (ResNet-50) on BP4D Dataset, run:
python train_stage2.py --dataset BP4D --arc resnet50 --exp-name resnet50_second_stage  --resume results/resnet50_first_stage/bs_64_seed_0_lr_0.0001/xxxx_fold1.pth --fold 1 --lam 0.05
  • to train the first stage of our approach (Swin-B) on DISFA Dataset, run:
python train_stage1.py --dataset DISFA --arc swin_transformer_base --exp-name swin_transformer_base_first_stage -b 64 -lr 0.0001 --fold 2
  • to train the second stage of our approach (Swin-B) on DISFA Dataset, run:
python train_stage2.py --dataset DISFA --arc swin_transformer_base --exp-name swin_transformer_base_second_stage  --resume results/swin_transformer_base_first_stage/bs_64_seed_0_lr_0.0001/xxxx_fold2.pth -b 64 -lr 0.000001 --fold 2 --lam 0.01 
  • to test the performance on DISFA Dataset, run:
python test.py --dataset DISFA --arc swin_transformer_base --exp-name test_fold2  --resume results/swin_transformer_base_second_stage/bs_64_seed_0_lr_0.000001/xxxx_fold2.pth --fold 2

Pretrained models

BP4D

arch_type GoogleDrive link Average F1-score
Ours (ResNet-18) - -
Ours (ResNet-50) link 64.7
Ours (ResNet-101) link 64.8
Ours (Swin-Tiny) link 65.6
Ours (Swin-Small) link 65.1
Ours (Swin-Base) link 65.5

DISFA

arch_type GoogleDrive link Average F1-score
Ours (ResNet-18) - -
Ours (ResNet-50) link 63.1
Ours (ResNet-101) - -
Ours (Swin-Tiny) - -
Ours (Swin-Small) - -
Ours (Swin-Base) link 62.4

Download these files (e.g. ME-GraphAU_swin_base_BP4D.zip) and unzip them, each of which involves the checkpoints of three folds.

📝 Main Results

BP4D

Method AU1 AU2 AU4 AU6 AU7 AU10 AU12 AU14 AU15 AU17 AU23 AU24 Avg.
EAC-Net 39.0 35.2 48.6 76.1 72.9 81.9 86.2 58.8 37.5 59.1 35.9 35.8 55.9
JAA-Net 47.2 44.0 54.9 77.5 74.6 84.0 86.9 61.9 43.6 60.3 42.7 41.9 60.0
LP-Net 43.4 38.0 54.2 77.1 76.7 83.8 87.2 63.3 45.3 60.5 48.1 54.2 61.0
ARL 45.8 39.8 55.1 75.7 77.2 82.3 86.6 58.8 47.6 62.1 47.4 55.4 61.1
SEV-Net 58.2 50.4 58.3 81.9 73.9 87.8 87.5 61.6 52.6 62.2 44.6 47.6 63.9
FAUDT 51.7 49.3 61.0 77.8 79.5 82.9 86.3 67.6 51.9 63.0 43.7 56.3 64.2
SRERL 46.9 45.3 55.6 77.1 78.4 83.5 87.6 63.9 52.2 63.9 47.1 53.3 62.9
UGN-B 54.2 46.4 56.8 76.2 76.7 82.4 86.1 64.7 51.2 63.1 48.5 53.6 63.3
HMP-PS 53.1 46.1 56.0 76.5 76.9 82.1 86.4 64.8 51.5 63.0 49.9 54.5 63.4
Ours (ResNet-50) 53.7 46.9 59.0 78.5 80.0 84.4 87.8 67.3 52.5 63.2 50.6 52.4 64.7
Ours (Swin-B) 52.7 44.3 60.9 79.9 80.1 85.3 89.2 69.4 55.4 64.4 49.8 55.1 65.5

DISFA

Method AU1 AU2 AU4 AU6 AU9 AU12 AU25 AU26 Avg.
EAC-Net 41.5 26.4 66.4 50.7 80.5 89.3 88.9 15.6 48.5
JAA-Net 43.7 46.2 56.0 41.4 44.7 69.6 88.3 58.4 56.0
LP-Net 29.9 24.7 72.7 46.8 49.6 72.9 93.8 65.0 56.9
ARL 43.9 42.1 63.6 41.8 40.0 76.2 95.2 66.8 58.7
SEV-Net 55.3 53.1 61.5 53.6 38.2 71.6 95.7 41.5 58.8
FAUDT 46.1 48.6 72.8 56.7 50.0 72.1 90.8 55.4 61.5
SRERL 45.7 47.8 59.6 47.1 45.6 73.5 84.3 43.6 55.9
UGN-B 43.3 48.1 63.4 49.5 48.2 72.9 90.8 59.0 60.0
HMP-PS 38.0 45.9 65.2 50.9 50.8 76.0 93.3 67.6 61.0
Ours (ResNet-50) 54.6 47.1 72.9 54.0 55.7 76.7 91.1 53.0 63.1
Ours (Swin-B) 52.5 45.7 76.1 51.8 46.5 76.1 92.9 57.6 62.4

🎓 Citation

if the code or method help you in the research, please cite the following paper:


@inproceedings{luo2022learning,
  title     = {Learning Multi-dimensional Edge Feature-based AU Relation Graph for Facial Action Unit Recognition},
  author    = {Luo, Cheng and Song, Siyang and Xie, Weicheng and Shen, Linlin and Gunes, Hatice},
  booktitle = {Proceedings of the Thirty-First International Joint Conference on
               Artificial Intelligence, {IJCAI-22}},
  pages     = {1239--1246},
  year      = {2022}
}


@article{song2022gratis,
    title={Gratis: Deep learning graph representation with task-specific topology and multi-dimensional edge features},
    author={Song, Siyang and Song, Yuxin and Luo, Cheng and Song, Zhiyuan and Kuzucu, Selim and Jia, Xi and Guo, Zhijiang and Xie, Weicheng and Shen, Linlin and Gunes, Hatice},
    journal={arXiv preprint arXiv:2211.12482},
    year={2022}
}



About

[IJCAI 2022] Learning Multi-dimensional Edge Feature-based AU Relation Graph for Facial Action Unit Recognition, Pytorch code

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages