DensePose:
Dense Human Pose Estimation In The Wild
Rıza Alp Güler, Natalia Neverova, Iasonas Kokkinos
[densepose.org
] [arXiv
] [BibTeX
]
Dense human pose estimation aims at mapping all human pixels of an RGB image to the 3D surface of the human body. DensePose-RCNN is implemented in the Detectron framework and is powered by Caffe2.
In this repository, we provide the code to train and evaluate DensePose-RCNN. We also provide notebooks to visualize the collected DensePose-COCO dataset and show the correspondences to the SMPL model.
Important Note
!!! This project is no longer supported !!!
DensePose is now part of Detectron2 (https://github.com/facebookresearch/detectron2/tree/master/projects/DensePose). There you can find the most up to date architectures / models. If you think some feature is missing from there, please post an issue in Detectron2 DensePose.
Installation
Please find installation instructions for Caffe2 and DensePose in INSTALL.md
, a document based on the Detectron installation instructions.
Inference-Training-Testing
After installation, please see GETTING_STARTED.md
for examples of inference and training and testing.
Notebooks
Visualization of DensePose-COCO annotations:
See notebooks/DensePose-COCO-Visualize.ipynb
to visualize the DensePose-COCO annotations on the images:
DensePose-COCO in 3D:
See notebooks/DensePose-COCO-on-SMPL.ipynb
to localize the DensePose-COCO annotations on the 3D template (SMPL
) model:
Visualize DensePose-RCNN Results:
See notebooks/DensePose-RCNN-Visualize-Results.ipynb
to visualize the inferred DensePose-RCNN Results.
DensePose-RCNN Texture Transfer:
See notebooks/DensePose-RCNN-Texture-Transfer.ipynb
to localize the DensePose-COCO annotations on the 3D template (SMPL
) model:
License
This source code is licensed under the license found in the LICENSE
file in the root directory of this source tree.
Citing DensePose
If you use Densepose, please use the following BibTeX entry.
@InProceedings{Guler2018DensePose,
title={DensePose: Dense Human Pose Estimation In The Wild},
author={R\{i}za Alp G\"uler, Natalia Neverova, Iasonas Kokkinos},
journal={The IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2018}
}