The code for the paper Exploiting Learnable Joint Groups for Hand Pose Estimation (Accepted by AAAI2021).
some qualitative results on the RHD/STB/FHD dtasets. In each triplet, from left to right: imgs (input), predictions, GT.
- RHD: you can obtain this dataset via hand3d.
- FHD: you can obtain this dataset following this instruction FreiHand .
- STB: you can obtain this dataset via STB .
If this repository is helpful to your research, please cite the paper:
@misc{li2020exploiting,
title={Exploiting Learnable Joint Groups for Hand Pose Estimation},
author={Moran Li and Yuan Gao and Nong Sang},
year={2020},
eprint={2012.09496},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
The code is built on Python3 and Pytorch 1.6.0.
pip install -r requirements.txt
- evaluate on the RHD:
python eval_RHD.py --data_dir 'your RHD_published_v2 dataset path'
-
Plot AUC curve on RHD/STB/DO
- obtain AUC curve for comparison with other SOTA methods (as shown in Fig.3 in main paper).
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Ours User Name on the FreiHand CodaLab website is 'anonymous15'