This repo contains the code of our papers:
HybrIK: A Hybrid Analytical-Neural Inverse Kinematics Solution for 3D Human Pose and Shape Estimation, In CVPR 2021
HybrIK-X: Hybrid Analytical-Neural Inverse Kinematics for Whole-body Mesh Recovery, ArXiv 2023
[2023/06/02] Demo code for whole-body HybrIK-X is released.
[2022/12/03] HybrIK for Blender add-on is now available for download. The output of HybrIK can be imported to Blender and saved as fbx
.
[2022/08/16] Pretrained model with HRNet-W48 backbone is available.
[2022/07/31] Training code with predicted camera is released.
[2022/07/25] HybrIK is now supported in Alphapose! Multi-person demo with pose-tracking is available.
[2022/04/26] Achieve SOTA results by adding the 3DPW dataset for training.
[2022/04/25] The demo code is released!
HybrIK and HybrIK-X are based on a hybrid inverse kinematics (IK) to convert accurate 3D keypoints to parametric body meshes.
# 1. Create a conda virtual environment.
conda create -n hybrik python=3.8 -y
conda activate hybrik
# 2. Install PyTorch
conda install pytorch==1.9.1 torchvision==0.10.1 -c pytorch
# 3. Install PyTorch3D (Optional, only for visualization)
conda install -c fvcore -c iopath -c conda-forge fvcore iopath
conda install -c bottler nvidiacub
pip install git+ssh://[email protected]/facebookresearch/pytorch3d.git@stable
# 4. Pull our code
git clone https://github.com/Jeff-sjtu/HybrIK.git
cd HybrIK
# 5. Install
pip install pycocotools
python setup.py develop # or "pip install -e ."
Download necessary model files from [Google Drive | Baidu (code: 2u3c
) ] and un-zip them in the ${ROOT}
directory.
Backbone | Training Data | PA-MPJPE (3DPW) | MPJPE (3DPW) | PA-MPJPE (Human3.6M) | MPJPE (Human3.6M) | Download | Config |
---|---|---|---|---|---|---|---|
ResNet-34 | w/ 3DPW | 44.5 | 72.4 | 33.8 | 55.5 | model | cfg |
HRNet-W48 | w/o 3DPW | 48.6 | 88.0 | 29.5 | 50.4 | model | cfg |
HRNet-W48 | w/ 3DPW | 41.8 | 71.3 | 29.8 | 47.1 | model | cfg |
Backbone | MVE (AGORA Test) | MPJPE (AGORA Test) | Download | Config |
---|---|---|---|---|
HRNet-W48 | 134.1 | 127.5 | model | cfg |
HRNet-W48 + RLE | 112.1 | 107.6 | model | cfg |
First make sure you download the pretrained model (with predicted camera) and place it in the ${ROOT}/pretrained_models
directory, i.e., ./pretrained_models/hybrik_hrnet.pth
and ./pretrained_models/hybrikx_rle_hrnet.pth
.
- Visualize HybrIK on videos (run in single frame) and save results:
python scripts/demo_video.py --video-name examples/dance.mp4 --out-dir res_dance --save-pk --save-img
The saved results in ./res_dance/res.pk
can be imported to Blender with our add-on.
- Visualize HybrIK on images:
python scripts/demo_image.py --img-dir examples --out-dir res
python scripts/demo_video_x.py --video-name examples/dance.mp4 --out-dir res_dance --save-pk --save-img
Download Human3.6M, MPI-INF-3DHP, 3DPW and MSCOCO datasets. You need to follow directory structure of the data
as below. Thanks to the great job done by Moon et al., we use the Human3.6M images provided in PoseNet.
|-- data
`-- |-- h36m
`-- |-- annotations
`-- images
`-- |-- pw3d
`-- |-- json
`-- imageFiles
`-- |-- 3dhp
`-- |-- annotation_mpi_inf_3dhp_train.json
|-- annotation_mpi_inf_3dhp_test.json
|-- mpi_inf_3dhp_train_set
`-- mpi_inf_3dhp_test_set
`-- |-- coco
`-- |-- annotations
| |-- person_keypoints_train2017.json
| `-- person_keypoints_val2017.json
|-- train2017
`-- val2017
- Download Human3.6M parsed annotations. [ Google | Baidu ]
- Download 3DPW parsed annotations. [ Google | Baidu ]
- Download MPI-INF-3DHP parsed annotations. [ Google | Baidu ]
./scripts/train_smpl_cam.sh test_3dpw configs/256x192_adam_lr1e-3-res34_smpl_3d_cam_2x_mix_w_pw3d.yaml
Download the pretrained model (ResNet-34 or HRNet-W48).
./scripts/validate_smpl_cam.sh ./configs/256x192_adam_lr1e-3-hrw48_cam_2x_w_pw3d_3dhp.yaml ./pretrained_hrnet.pth
If our code helps your research, please consider citing the following paper:
@inproceedings{li2021hybrik,
title={Hybrik: A hybrid analytical-neural inverse kinematics solution for 3d human pose and shape estimation},
author={Li, Jiefeng and Xu, Chao and Chen, Zhicun and Bian, Siyuan and Yang, Lixin and Lu, Cewu},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={3383--3393},
year={2021}
}
@article{li2023hybrik,
title={HybrIK-X: Hybrid Analytical-Neural Inverse Kinematics for Whole-body Mesh Recovery},
author={Li, Jiefeng and Bian, Siyuan and Xu, Chao and Chen, Zhicun and Yang, Lixin and Lu, Cewu},
journal={arXiv preprint arXiv:2304.05690},
year={2023}
}