LieNet
GitHub repository for "Deep Learning on Lie Groups for Skeleton-based Action Recognition", CVPR 2017.
Install / Use
/learn @zhiwu-huang/LieNetREADME
LieNet-master
Zhiwu Huang, Chengde Wan, Thomas Probst, Luc Van Gool. Deep Learning on Lie Groups for Skeleton-based Action Recognition, In Proc. CVPR 2017.
Version 1.0, Copyright(c) November, 2017.
Note that the copyright of the manopt toolbox is reserved by https://www.manopt.org/
Usage
Step1: Place the <a href="https://data.vision.ee.ethz.ch/zzhiwu/ManifoldNetData/LieData/G3D_Lie_data.zip"> G3D </a> LieGroup data under the folder "./data/g3d/".
Step2: Launch lienet_g3d.m for a simple example.
Related Work/Implementation
- Thanks to Oleg Smirnov who is Sr. Applied Scientist at Amazon, a <a href="https://github.com/master/tensorflow-manopt"> TensorFlow ManOpt </a> library is released to reproduce our LieNet.
How to Cite <a name="How-to-Cite"></a>
If you find this project helpful, please consider citing us as follows:
@inproceedings{huang2017lienet,
title = {Deep Learning on Lie Groups for Skeleton-based Action Recognition},
author = {Huang, Zhiwu and
Wan, Chengde and
Probst, Thomas and
Van Gool, Luc},
year = {2017},
booktitle = {{IEEE} Conference on Computer Vision and Pattern Recognition (CVPR)}
}
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