Code repository for Towards 3D Human Pose Estimation in the Wild: a Weakly-supervised Approach
This repository includes code for the network presented in:
Xingyi Zhou, Qixing Huang, Xiao Sun, Xiangyang Xue, Yichen Wei, Towards 3D Human Pose Estimation in the Wild: a Weakly-supervised Approach ICCV 2017 (arXiv:1704.02447)
The code is developed upon Stacked Hourglass Network.
[New] Checkout our PyTorch implementation.
Contact: [email protected]
models
.th demo.lua /path/to/image
.We provide example images in src/images/
. For testing your own image, it is important that the person should be at the center of the image and most of the body parts should be within the image.
Prepare the training data:
src/Tools/h36mPreprocessing.m
. We Converted Human3.6M dataset to .jpg files with 5x down-sampling.python GetH36M.py
in src/Tools/
to convert H36M annotations to hdf5 format.python GetMPI-INF-3D.py
in src/Tools/
to convert 3DHP annotations to hdf5 format. (or set valid3DHP
in opt.lua
false if you don't evaluate on this dataset)Stage1: Train the 2D hourglass component
cd src
th main.lua -expID Stage1 -dataset fusion -task pose-hgreg-3d -netType hgreg-3d -varWeight 0.0 -regWeight 0.0 -nEpochs 60
Our results of this stage is provided here. Most of the experiments in the paper are based on this model.
th main.lua -expID Stage2 -dataset fusion -task pose-hgreg-3d -loadModel ../models/HGRegS2M2M2_60.t7 -varWeight 0.0 -regWeight 0.1 -dropLR 40 -nEpochs 50
th main.lua -expID Stage3 -dataset fusion -task pose-hgreg-3d -loadModel ../exp/fusion/Stage2/model_50.t7 -varWeight 0.01 -regWeight 0.1 -LR 2.5e-5 -nEpochs 10`
@InProceedings{Zhou_2017_ICCV,
author = {Zhou, Xingyi and Huang, Qixing and Sun, Xiao and Xue, Xiangyang and Wei, Yichen},
title = {Towards 3D Human Pose Estimation in the Wild: A Weakly-Supervised Approach},
booktitle = {The IEEE International Conference on Computer Vision (ICCV)},
month = {Oct},
year = {2017}
}