MAU: A Motion-Aware Unit for Video Prediction and Beyond, NeurIPS2021

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Deep LearningMAU
Overview

MAU (NeurIPS2021)

Zheng Chang, Xinfeng Zhang, Shanshe Wang, Siwei Ma, Yan Ye, Xinguang Xiang, Wen GAo.

Official PyTorch Code for "MAU: A Motion-Aware Unit for Video Prediction and Beyond" [paper]

Requirements

  • PyTorch 1.7
  • CUDA 11.0
  • CuDNN 8.0.5
  • python 3.6.7

Installation

Create conda environment:

    $ conda create -n MAU python=3.6.7
    $ conda activate MAU
    $ pip install -r requirements.txt
    $ conda install pytorch==1.7 torchvision cudatoolkit=11.0 -c pytorch

Download repository:

    $ git clone [email protected]:ZhengChang467/MAU.git

Unzip MovingMNIST Dataset:

    $ cd data
    $ unzip mnist_dataset.zip

Test

    $ python MAU_run.py --is_train False

Train

    $ python MAU_run.py --is_train True

We plan to share the train codes for other datasets soon!

Citation

Please cite the following paper if you feel this repository useful.

@article{chang2021mau,
title={MAU: A Motion-Aware Unit for Video Prediction and Beyond},
author={Chang, Zheng and Zhang, Xinfeng and Wang, Shanshe and Ma, Siwei and Ye, Yan and Xinguang, Xiang and Gao, Wen},
journal={Advances in Neural Information Processing Systems},
volume={34},
year={2021}}

License

See MIT License

Owner
ZhengChang
ZhengChang
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