Skip to content

gulvarol/smplpytorch

Repository files navigation

SMPL layer for PyTorch

SMPL human body [1] layer for PyTorch (tested with v0.4 and v1.x) is a differentiable PyTorch layer that deterministically maps from pose and shape parameters to human body joints and vertices. It can be integrated into any architecture as a differentiable layer to predict body meshes. The code is adapted from the manopth repository by Yana Hasson.

smpl

Setup

1. The smplpytorch package

  • Run without installing: You will need to install the dependencies listed in environment.yml:
    • conda env update -f environment.yml in an existing environment, or
    • conda env create -f environment.yml, for a new smplpytorch environment
  • Install: To import SMPL_Layer in another project with from smplpytorch.pytorch.smpl_layer import SMPL_Layer do one of the following.
    • Option 1: This should automatically install the dependencies.
      git clone https://github.com/gulvarol/smplpytorch.git
      cd smplpytorch
      pip install .
    • Option 2: You can install smplpytorch from PyPI. Additionally, you might need to install chumpy.
      pip install smplpytorch

2. Download SMPL pickle files

  • Download the models from the SMPL website by choosing "SMPL for Python users". Note that you need to comply with the SMPL model license.
  • Extract and copy the models folder into the smplpytorch/native/ folder (or set the model_root parameter accordingly).

Demo

Forward pass the randomly created pose and shape parameters from the SMPL layer and display the human body mesh and joints:

python demo.py

Acknowledgements

The code largely builds on the manopth repository from Yana Hasson, which implements the MANO hand model [2] layer.

The code is a PyTorch port of the original SMPL model from chumpy. It builds on the work of Loper et al. [1].

The code reuses part of the code by Zhang Xiong to compute the rotation utilities.

If you find this code useful for your research, please cite the original SMPL publication:

@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 Trans. Graphics (Proc. SIGGRAPH Asia)},
    number = {6},
    pages = {248:1--248:16},
    volume = {34},
    year = {2015}
}

References

[1] Matthew Loper, Naureen Mahmood, Javier Romero, Gerard Pons-Moll, and Michael J. Black, "SMPL: A Skinned Multi-Person Linear Model," SIGGRAPH Asia, 2015.

[2] Javier Romero, Dimitrios Tzionas, and Michael J. Black, "Embodied Hands: Modeling and Capturing Hands and Bodies Together," SIGGRAPH Asia, 2017.

About

SMPL body model layer for PyTorch

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages