| # RAFT |
| This repository contains the source code for our paper: |
|
|
| [RAFT: Recurrent All Pairs Field Transforms for Optical Flow](https://arxiv.org/pdf/2003.12039.pdf)<br/> |
| ECCV 2020 <br/> |
| Zachary Teed and Jia Deng<br/> |
|
|
| <img src="RAFT.png"> |
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|
| ## Requirements |
| The code has been tested with PyTorch 1.6 and Cuda 10.1. |
| ```Shell |
| conda create --name raft |
| conda activate raft |
| conda install pytorch=1.6.0 torchvision=0.7.0 cudatoolkit=10.1 matplotlib tensorboard scipy opencv -c pytorch |
| ``` |
|
|
| ## Demos |
| Pretrained models can be downloaded by running |
| ```Shell |
| ./download_models.sh |
| ``` |
| or downloaded from [google drive](https://drive.google.com/drive/folders/1sWDsfuZ3Up38EUQt7-JDTT1HcGHuJgvT?usp=sharing) |
|
|
| You can demo a trained model on a sequence of frames |
| ```Shell |
| python demo.py --model=models/raft-things.pth --path=demo-frames |
| ``` |
|
|
| ## Required Data |
| To evaluate/train RAFT, you will need to download the required datasets. |
| * [FlyingChairs](https://lmb.informatik.uni-freiburg.de/resources/datasets/FlyingChairs.en.html#flyingchairs) |
| * [FlyingThings3D](https://lmb.informatik.uni-freiburg.de/resources/datasets/SceneFlowDatasets.en.html) |
| * [Sintel](http://sintel.is.tue.mpg.de/) |
| * [KITTI](http://www.cvlibs.net/datasets/kitti/eval_scene_flow.php?benchmark=flow) |
| * [HD1K](http://hci-benchmark.iwr.uni-heidelberg.de/) (optional) |
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| 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 |
|
|
| ```Shell |
| βββ datasets |
| βββ Sintel |
| βββ test |
| βββ training |
| βββ KITTI |
| βββ testing |
| βββ training |
| βββ devkit |
| βββ FlyingChairs_release |
| βββ data |
| βββ FlyingThings3D |
| βββ frames_cleanpass |
| βββ frames_finalpass |
| βββ optical_flow |
| ``` |
|
|
| ## Evaluation |
| You can evaluate a trained model using `evaluate.py` |
| ```Shell |
| python evaluate.py --model=models/raft-things.pth --dataset=sintel --mixed_precision |
| ``` |
|
|
| ## Training |
| We used the following training schedule in our paper (2 GPUs). Training logs will be written to the `runs` which can be visualized using tensorboard |
| ```Shell |
| ./train_standard.sh |
| ``` |
|
|
| If you have a RTX GPU, training can be accelerated using mixed precision. You can expect similiar results in this setting (1 GPU) |
| ```Shell |
| ./train_mixed.sh |
| ``` |
|
|
| ## (Optional) Efficent Implementation |
| You can optionally use our alternate (efficent) implementation by compiling the provided cuda extension |
| ```Shell |
| cd alt_cuda_corr && python setup.py install && cd .. |
| ``` |
| and running `demo.py` and `evaluate.py` with the `--alternate_corr` flag Note, this implementation is somewhat slower than all-pairs, but uses significantly less GPU memory during the forward pass. |
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