Awesome
Structured Feature Learning for Pose Estimation
This is the code for our work Structured Feature Learning for Pose estimation
Training
Make caffe: We write our own layer for loss, channel dropout and mix interpolation, if you are not going to use these functions, you can use your own caffe.
make matcaffe
Get LMDB: Run "Data_prepare.m" in matlab to generate LMDB requires Train the caffe model: Run "Baseline.sh. You may need the pre-train fully convolutional VGG-16 model.
./Baseline.sh
Test: Select the best model for testing, and run "TestModel.m" to see the results.
Released models
We provide a model we trained on LSP dataset (itration = 3250). If you are going to test this model, please download it and put it in the location specified in code, and set the variable "test_our_provided_model" to true.
Cite
If you use this code, please cite our work
@inproceedings{chu2016structure,
title={Structured Feature Learning for Pose Estimation},
author={Chu, Xiao and Ouyang, Wanli and Li,Hongsheng and Wang, Xiaogang},
booktitle={CVPR}, year={2016}
}
Our project is written based on Xianjie Chen's NIPS2014