# pytorch-sepconv **News:** Check our new CVPR 2018 paper on a [faster and higher-quality](http://web.cecs.pdx.edu/~fliu/project/ctxsyn) frame interpolation method. This is a reference implementation of Video Frame Interpolation via Adaptive Separable Convolution [1] using PyTorch. Given two frames, it will make use of [adaptive convolution](http://graphics.cs.pdx.edu/project/adaconv) [2] in a separable manner to interpolate the intermediate frame. Should you be making use of our work, please cite our paper [1]. Paper For the Torch version of this work, please see: https://github.com/sniklaus/torch-sepconv
For a third-party fork with video support, consider: https://github.com/dagf2101/pytorch-sepconv ## setup To build the implementation and download the pre-trained networks, run `bash install.bash` and make sure that you configured the `CUDA_HOME` environment variable. After successfully completing this step, run `python run.py` to test it. Should you receive an error message regarding an invalid device function during execution, configure the utilized CUDA architecture within `install.bash` to something your graphics card supports. ## usage To run it on your own pair of frames, use the following command. You can either select the `l1` or the `lf` model, please see our paper for more details. In short, the `l1` model should be used for quantitative evaluations and the `lf` model for qualitative comparisons. ``` python run.py --model lf --first ./images/first.png --second ./images/second.png --out ./result.png ``` ## video Video ## license The provided implementation is strictly for academic purposes only. Should you be interested in using our technology for any commercial use, please feel free to contact us. ## references ``` [1] @inproceedings{Niklaus_ICCV_2017, author = {Simon Niklaus and Long Mai and Feng Liu}, title = {Video Frame Interpolation via Adaptive Separable Convolution}, booktitle = {IEEE International Conference on Computer Vision}, year = {2017} } ``` ``` [2] @inproceedings{Niklaus_CVPR_2017, author = {Simon Niklaus and Long Mai and Feng Liu}, title = {Video Frame Interpolation via Adaptive Convolution}, booktitle = {IEEE Conference on Computer Vision and Pattern Recognition}, year = {2017} } ``` ## acknowledgment This work was supported by NSF IIS-1321119. The video above uses materials under a Creative Common license or with the owner's permission, as detailed at the end.