SMPL-X: A new joint 3D model of the human body, face and hands together
[Paper Page] [Paper] [Supp. Mat.]
Table of Contents
- License
- Description
- Installation
- Downloading the model
- Loading SMPL-X, SMPL+H and SMPL
- MANO and FLAME correspondences
- Example
- Citation
- Acknowledgments
- Contact
License
Software Copyright License for non-commercial scientific research purposes. Please read carefully the terms and conditions and any accompanying documentation before you download and/or use the SMPL-X/SMPLify-X model, data and software, (the "Model & Software"), including 3D meshes, blend weights, blend shapes, textures, software, scripts, and animations. By downloading and/or using the Model & Software (including downloading, cloning, installing, and any other use of this github repository), you acknowledge that you have read these terms and conditions, understand them, and agree to be bound by them. If you do not agree with these terms and conditions, you must not download and/or use the Model & Software. Any infringement of the terms of this agreement will automatically terminate your rights under this License.
Disclaimer
The original images used for the figures 1 and 2 of the paper can be found in this link. The images in the paper are used under license from gettyimages.com. We have acquired the right to use them in the publication, but redistribution is not allowed. Please follow the instructions on the given link to acquire right of usage. Our results are obtained on the 483 Γ 724 pixels resolution of the original images.
Description
SMPL-X (SMPL eXpressive) is a unified body model with shape parameters trained jointly for the face, hands and body. SMPL-X uses standard vertex based linear blend skinning with learned corrective blend shapes, has N = 10, 475 vertices and K = 54 joints, which include joints for the neck, jaw, eyeballs and fingers. SMPL-X is defined by a function M(ΞΈ, Ξ², Ο), where ΞΈ is the pose parameters, Ξ² the shape parameters and Ο the facial expression parameters.
Installation
To install the model please follow the next steps in the specified order:
- To install from PyPi simply run:
pip install smplx[all]
- Clone this repository and install it using the setup.py script:
git clone https://github.com/vchoutas/smplx
python setup.py install
Downloading the model
To download the SMPL-X model go to this project website and register to get access to the downloads section.
To download the SMPL+H model go to this project website and register to get access to the downloads section.
To download the SMPL model go to this (male and female models) and this (gender neutral model) project website and register to get access to the downloads section.
Loading SMPL-X, SMPL+H and SMPL
SMPL and SMPL+H setup
The loader gives the option to use any of the SMPL-X, SMPL+H, SMPL, and MANO models. Depending on the model you want to use, please follow the respective download instructions. To switch between MANO, SMPL, SMPL+H and SMPL-X just change the model_path or model_type parameters. For more details please check the docs of the model classes. Before using SMPL and SMPL+H you should follow the instructions in tools/README.md to remove the Chumpy objects from both model pkls, as well as merge the MANO parameters with SMPL+H.
Model loading
You can either use the create function from body_models or directly call the constructor for the SMPL, SMPL+H and SMPL-X model. The path to the model can either be the path to the file with the parameters or a directory with the following structure:
models
βββ smpl
β βββ SMPL_FEMALE.pkl
β βββ SMPL_MALE.pkl
β βββ SMPL_NEUTRAL.pkl
βββ smplh
β βββ SMPLH_FEMALE.pkl
β βββ SMPLH_MALE.pkl
βββ mano
| βββ MANO_RIGHT.pkl
| βββ MANO_LEFT.pkl
βββ smplx
βββ SMPLX_FEMALE.npz
βββ SMPLX_FEMALE.pkl
βββ SMPLX_MALE.npz
βββ SMPLX_MALE.pkl
βββ SMPLX_NEUTRAL.npz
βββ SMPLX_NEUTRAL.pkl
MANO and FLAME correspondences
The vertex correspondences between SMPL-X and MANO, FLAME can be downloaded from the project website. If you have extracted the correspondence data in the folder correspondences, then use the following scripts to visualize them:
- To view MANO correspondences run the following command:
python examples/vis_mano_vertices.py --model-folder $SMPLX_FOLDER --corr-fname correspondences/MANO_SMPLX_vertex_ids.pkl
- To view FLAME correspondences run the following command:
python examples/vis_flame_vertices.py --model-folder $SMPLX_FOLDER --corr-fname correspondences/SMPL-X__FLAME_vertex_ids.npy
Example
After installing the smplx package and downloading the model parameters you should be able to run the demo.py script to visualize the results. For this step you have to install the pyrender and trimesh packages.
python examples/demo.py --model-folder $SMPLX_FOLDER --plot-joints=True --gender="neutral"
Citation
Depending on which model is loaded for your project, i.e. SMPL-X or SMPL+H or SMPL, please cite the most relevant work below, listed in the same order:
@inproceedings{SMPL-X:2019,
title = {Expressive Body Capture: 3D Hands, Face, and Body from a Single Image},
author = {Pavlakos, Georgios and Choutas, Vasileios and Ghorbani, Nima and Bolkart, Timo and Osman, Ahmed A. A. and Tzionas, Dimitrios and Black, Michael J.},
booktitle = {Proceedings IEEE Conf. on Computer Vision and Pattern Recognition (CVPR)},
year = {2019}
}
@article{MANO:SIGGRAPHASIA:2017,
title = {Embodied Hands: Modeling and Capturing Hands and Bodies Together},
author = {Romero, Javier and Tzionas, Dimitrios and Black, Michael J.},
journal = {ACM Transactions on Graphics, (Proc. SIGGRAPH Asia)},
volume = {36},
number = {6},
series = {245:1--245:17},
month = nov,
year = {2017},
month_numeric = {11}
}
@article{SMPL:2015,
author = {Loper, Matthew and Mahmood, Naureen and Romero, Javier and Pons-Moll, Gerard and Black, Michael J.},
title = {{SMPL}: A Skinned Multi-Person Linear Model},
journal = {ACM Transactions on Graphics, (Proc. SIGGRAPH Asia)},
month = oct,
number = {6},
pages = {248:1--248:16},
publisher = {ACM},
volume = {34},
year = {2015}
}
This repository was originally developed for SMPL-X / SMPLify-X (CVPR 2019), you might be interested in having a look: https://smpl-x.is.tue.mpg.de.
Acknowledgments
Facial Contour
Special thanks to Soubhik Sanyal for sharing the Tensorflow code used for the facial landmarks.
Contact
The code of this repository was implemented by Vassilis Choutas.
For questions, please contact [email protected].
For commercial licensing (and all related questions for business applications), please contact [email protected].