In current version, we release the codes of PN-GAN and re-id testing . The other parts of our project will be released later.
Please download the reID dataset and organize it as follows (Market-1501 for example):
dataset
│── Market-1501 # for Market-1501 dataset
│ ├── bounding_box_train
│ ├── bounding_box_test
│ ├── query
| ├── bounding_box_train_pose # containing training pose images generated by AlphaPose or OpenPose
| ├── bounding_box_test_pose # containing test pose images generated by AlphaPose or OpenPose
| ├── query_pose # containing query pose images generated by AlphaPose or OpenPose
| ├── train_idx.txt # the TXT file that stores the training identites, e.g., 2, 7, 10, 11, ...
|
Config:
imgs_path
: the path to reID images (e.g., Market-1501/bounding_box_train/)
pose_path
: the path to pose images (e.g., Market-1501/bounding_box_train_pose/, note that the name of pose image is the same as its corresponding reID image)
idx_path
: the TXT file that stores the training identites (e.g., Market-1501/train_idx.txt/)
GAN:
(1) run GAN/train.py
to train the GAN model. The model and log file will be saved in folder GAN/model
and GAN/log
respectively. The validate images will be synthesized in GAN/images
;
or (2) run GAN/evaluate.py
to generate images for specific testing image. The output will be saved in folder GAN/test
.
Person re-ID:
(1) run viper_feature.py
to extract features of probe and gallery, the features will be saved in folder ../feature/
;
(2) run CMC_viper.py
to compute cmc scores with python code, it will output three kinds of results:
- avg: 8 pose features are fused by average operation
- max: 8 pose features are fused by maximum operation
- concat: 8 pose features are fused by concatenation operation
(3) (optional) run Market-1501_baseline/zzd_evaluation_res_faster.m
to compute cmc scores with matlab code. You can modify the code in line 93 to obtain different result of each metric learning (e.g. 'dist_avg.mat', 'dist_max.mat', or 'dist_concat.mat'). It should get the same results with step 2.
The testing codes are modified from Tong Xiao's code, and also refer to Zhedong Zheng's codes.
If you find this project useful in your research, please consider cite:
@inproceedings{qian2018pose,
title={Pose-normalized image generation for person re-identification},
author={Qian, Xuelin and Fu, Yanwei and Xiang, Tao and Wang, Wenxuan and Qiu, Jie and Wu, Yang and Jiang, Yu-Gang and Xue, Xiangyang},
booktitle={Proceedings of the European conference on computer vision (ECCV)},
pages={650--667},
year={2018}
}
Any questions or discussion are welcome!
Xuelin Qian ([email protected])