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FlowFormer: A Transformer Architecture for Optical Flow

FlowFormer: A Transformer Architecture for Optical Flow
Zhaoyang Huang*, Xiaoyu Shi*, Chao Zhang, Qiang Wang, Ka Chun Cheung, Hongwei Qin, Jifeng Dai, Hongsheng Li
ECCV 2022

News

Our FlowFormer++ and VideoFlow are accepted by CVPR and ICCV, which ranks 2nd and 1st on the Sintel benchmark! Please also refer to our FlowFormer++ and VideoFlow.

TODO List

  • Code release (2022-8-1)
  • Models release (2022-8-1)

Data Preparation

Similar to RAFT, to evaluate/train FlowFormer, you will need to download the required datasets.

By default datasets.py will search for the datasets in these locations. You can create symbolic links to wherever the datasets were downloaded in the datasets folder

├── datasets
    ├── Sintel
        ├── test
        ├── training
    ├── KITTI
        ├── testing
        ├── training
        ├── devkit
    ├── FlyingChairs_release
        ├── data
    ├── FlyingThings3D
        ├── frames_cleanpass
        ├── frames_finalpass
        ├── optical_flow

Requirements

conda create --name flowformer
conda activate flowformer
conda install pytorch=1.6.0 torchvision=0.7.0 cudatoolkit=10.1 matplotlib tensorboard scipy opencv -c pytorch
pip install yacs loguru einops timm==0.4.12 imageio

Training

The script will load the config according to the training stage. The trained model will be saved in a directory in logs and checkpoints. For example, the following script will load the config configs/default.py. The trained model will be saved as logs/xxxx/final and checkpoints/chairs.pth.

python -u train_FlowFormer.py --name chairs --stage chairs --validation chairs

To finish the entire training schedule, you can run:

./run_train.sh

Models

We provide models trained in the four stages. The default path of the models for evaluation is:

├── checkpoints
    ├── chairs.pth
    ├── things.pth
    ├── sintel.pth
    ├── kitti.pth
    ├── flowformer-small.pth 
    ├── things_kitti.pth

flowformer-small.pth is a small version of our flowformer. things_kitti.pth is the FlowFormer# introduced in our supplementary, used for KITTI training set evaluation.

Evaluation

The model to be evaluated is assigned by the _CN.model in the config file.

Evaluating the model on the Sintel training set and the KITTI training set. The corresponding config file is configs/things_eval.py.

# with tiling technique
python evaluate_FlowFormer_tile.py --eval sintel_validation
python evaluate_FlowFormer_tile.py --eval kitti_validation --model checkpoints/things_kitti.pth
# without tiling technique
python evaluate_FlowFormer.py --dataset sintel
with tile w/o tile
clean 0.94 1.01
final 2.33 2.40

Evaluating the small version model. The corresponding config file is configs/small_things_eval.py.

# with tiling technique
python evaluate_FlowFormer_tile.py --eval sintel_validation --small
# without tiling technique
python evaluate_FlowFormer.py --dataset sintel --small
with tile w/o tile
clean 1.21 1.32
final 2.61 2.68

Generating the submission for the Sintel and KITTI benchmarks. The corresponding config file is configs/submission.py.

python evaluate_FlowFormer_tile.py --eval sintel_submission
python evaluate_FlowFormer_tile.py --eval kitti_submission

Visualizing the sintel dataset:

python visualize_flow.py --eval_type sintel --keep_size

Visualizing an image sequence extracted from a video:

python visualize_flow.py --eval_type seq

The default image sequence format is:

├── demo_data
    ├── mihoyo
        ├── 000001.png
        ├── 000002.png
        ├── 000003.png
            .
            .
            .
        ├── 001000.png

License

FlowFormer is released under the Apache License

Citation

@article{huang2022flowformer,
  title={{FlowFormer}: A Transformer Architecture for Optical Flow},
  author={Huang, Zhaoyang and Shi, Xiaoyu and Zhang, Chao and Wang, Qiang and Cheung, Ka Chun and Qin, Hongwei and Dai, Jifeng and Li, Hongsheng},
  journal={{ECCV}},
  year={2022}
}
@inproceedings{shi2023flowformer++,
  title={Flowformer++: Masked cost volume autoencoding for pretraining optical flow estimation},
  author={Shi, Xiaoyu and Huang, Zhaoyang and Li, Dasong and Zhang, Manyuan and Cheung, Ka Chun and See, Simon and Qin, Hongwei and Dai, Jifeng and Li, Hongsheng},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={1599--1610},
  year={2023}
}
@article{huang2023flowformer,
  title={FlowFormer: A Transformer Architecture and Its Masked Cost Volume Autoencoding for Optical Flow},
  author={Huang, Zhaoyang and Shi, Xiaoyu and Zhang, Chao and Wang, Qiang and Li, Yijin and Qin, Hongwei and Dai, Jifeng and Wang, Xiaogang and Li, Hongsheng},
  journal={arXiv preprint arXiv:2306.05442},
  year={2023}
}

Acknowledgement

In this project, we use parts of codes in: