Awesome
[CVPR 2022] Practical Stereo Matching via Cascaded Recurrent Network with Adaptive Correlation
This repository contains MegEngine implementation of our paper:
<img src="img/teaser.jpg">Practical Stereo Matching via Cascaded Recurrent Network with Adaptive Correlation
Jiankun Li, Peisen Wang, Pengfei Xiong, Tao Cai, Ziwei Yan, Lei Yang, Jiangyu Liu, Haoqiang Fan, Shuaicheng Liu
CVPR 2022 (Oral)
Datasets
The Proposed Dataset
Download
There are two ways to download the dataset(~400GB) proposed in our paper:
- Download using shell scripts
dataset_download.sh
sh dataset_download.sh
the dataset will be downloaded and extracted in ./stereo_trainset/crestereo
- Download from BaiduCloud here(Extraction code:
aa3g
) and extract the tar files manually.
Disparity Format
The disparity is saved as .png
uint16 format which can be loaded using opencv imread
function:
def get_disp(disp_path):
disp = cv2.imread(disp_path, cv2.IMREAD_UNCHANGED)
return disp.astype(np.float32) / 32
Other Public Datasets
Other public datasets we use including
Dependencies
CUDA Version: 10.1, Python Version: 3.6.9
- MegEngine v1.8.2
- opencv-python v3.4.0
- numpy v1.18.1
- Pillow v8.4.0
- tensorboardX v2.1
python3 -m pip install -r requirements.txt
We also provide docker to run the code quickly:
docker run --gpus all -it -v /tmp:/tmp ylmegvii/crestereo
shotwell /tmp/disparity.png
Inference
Download the pretrained MegEngine model from here and run:
python3 test.py --model_path path_to_mge_model --left img/test/left.png --right img/test/right.png --size 1024x1536 --output disparity.png
Training
Modify the configurations in cfgs/train.yaml
and run the following command:
python3 train.py
You can launch a TensorBoard to monitor the training process:
tensorboard --logdir ./train_log
and navigate to the page at http://localhost:6006
in your browser.
Acknowledgements
Part of the code is adapted from previous works:
We thank all the authors for their awesome repos.
Citation
If you find the code or datasets helpful in your research, please cite:
@inproceedings{li2022practical,
title={Practical stereo matching via cascaded recurrent network with adaptive correlation},
author={Li, Jiankun and Wang, Peisen and Xiong, Pengfei and Cai, Tao and Yan, Ziwei and Yang, Lei and Liu, Jiangyu and Fan, Haoqiang and Liu, Shuaicheng},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={16263--16272},
year={2022}
}