3d-pose-baseline
This is the code for the paper
Julieta Martinez, Rayat Hossain, Javier Romero, James J. Little. A simple yet effective baseline for 3d human pose estimation. In ICCV, 2017. https://arxiv.org/pdf/1705.03098.pdf.
The code in this repository was mostly written by Julieta Martinez, Rayat Hossain and Javier Romero.
We provide a strong baseline for 3d human pose estimation that also sheds light on the challenges of current approaches. Our model is lightweight and we strive to make our code transparent, compact, and easy-to-understand.
Dependencies
- h5py
- tensorflow 1.0 or later
First of all
- Watch our video: https://youtu.be/Hmi3Pd9x1BE
- Clone this repository and get the data. We provide the Human3.6M dataset in 3d points, camera parameters to produce ground truth 2d detections, and Stacked Hourglass detections.
git clone https://github.com/una-dinosauria/3d-pose-baseline.git
cd 3d-pose-baseline
mkdir data
cd data
wget https://www.dropbox.com/s/e35qv3n6zlkouki/h36m.zip
unzip h36m.zip
rm h36m.zip
cd ..
Quick demo
For a quick demo, you can train for one epoch and visualize the results. To train, run
python src/predict_3dpose.py --camera_frame --residual --batch_norm --dropout 0.5 --max_norm --evaluateActionWise --use_sh --epochs 1
This should take about <5 minutes to complete on a GTX 1080, and give you around 75 mm of error on the test set.
Now, to visualize the results, simply run
python src/predict_3dpose.py --camera_frame --residual --batch_norm --dropout 0.5 --max_norm --evaluateActionWise --use_sh --epochs 1 --sample --load 24371
This will produce a visualization similar to this:
Training
To train a model with clean 2d detections, run:
python src/predict_3dpose.py --camera_frame --residual --batch_norm --dropout 0.5 --max_norm --evaluateActionWise
This corresponds to Table 2, bottom row. Ours (GT detections) (MA)
To train on Stacked Hourglass detections, run
python src/predict_3dpose.py --camera_frame --residual --batch_norm --dropout 0.5 --max_norm --evaluateActionWise --use_sh
This corresponds to Table 2, next-to-last row. Ours (SH detections) (MA)
On a GTX 1080 GPU, this takes <8 ms for forward+backward computation, and <6 ms for forward-only computation per batch of 64.
Pre-trained model
We also provide a model pre-trained on Stacked-Hourglass detections, available through google drive.
To test the model, decompress the file at the top level of this project, and call
python src/predict_3dpose.py --camera_frame --residual --batch_norm --dropout 0.5 --max_norm --evaluateActionWise --use_sh --epochs 200 --sample --load 4874200
Fine-tuned stacked-hourglass detections
You can find the detections produced by Stacked Hourglass after fine-tuning on the H3.6M dataset on google drive.
Citing
If you use our code, please cite our work
@inproceedings{martinez_2017_3dbaseline,
title={A simple yet effective baseline for 3d human pose estimation},
author={Martinez, Julieta and Hossain, Rayat and Romero, Javier and Little, James J.},
booktitle={ICCV},
year={2017}
}
Other implementations
Extensions
- @ArashHosseini maintains a fork for estimating 3d human poses using the 2d poses estimated by either OpenPose or tf-pose-estimation as input.
License
MIT