Angjoo Kanazawa, Michael J. Black, David W. Jacobs, Jitendra Malik CVPR 2018
- Python 2.7
- TensorFlow tested on version 1.3
virtualenv venv_hmr
source venv_hmr/bin/activate
pip install -U pip
deactivate
source venv_hmr/bin/activate
pip install -r requirements.txt
With GPU:
pip install tensorflow-gpu==1.3.0
Without GPU:
pip install tensorflow==1.3.0
- Download the pre-trained models
wget https://people.eecs.berkeley.edu/~kanazawa/cachedir/hmr/models.tar.gz && tar -xf models.tar.gz
- Run the demo
python -m demo --img_path data/coco1.png
python -m demo --img_path data/im1954.jpg
Images should be tightly cropped, where the height of the person is roughly 150px.
On images that are not tightly cropped, you can run
openpose and supply
its output json (run it with --write_json
option).
When json_path is specified, the demo will compute the right scale and bbox center to run HMR:
python -m demo --img_path data/random.jpg --json_path data/random_keypoints.json
(The demo only runs on the most confident bounding box, see src/util/openpose.py:get_bbox
)
Please see the doc/train.md!
If you use this code for your research, please consider citing:
@inProceedings{kanazawaHMR18,
title={End-to-end Recovery of Human Shape and Pose},
author = {Angjoo Kanazawa
and Michael J. Black
and David W. Jacobs
and Jitendra Malik},
booktitle={Computer Vision and Pattern Regognition (CVPR)},
year={2018}
}
Dawars has created a docker image for this project: https://hub.docker.com/r/dawars/hmr/
MandyMo has implemented a pytorch version of the repo: https://github.com/MandyMo/pytorch_HMR.git
I have not tested them, but I appreciate the contribution! Thank you!!