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This repo contains the official implementation of our paper:
DLow: Diversifying Latent Flows for Diverse Human Motion Prediction
Ye Yuan, Kris Kitani ECCV 2020
[website] [paper] [talk] [summary] [demo]
Installation
Datasets
Please follow the data preprocessing steps (DATASETS.md) inside the VideoPose3D repo. Place the prepocessed data data_3d_h36m.npz (Human3.6M) and data_3d_humaneva15.npz (HumanEva-I) under the data folder.
If you find our work useful in your research, please cite our paper DLow:
@inproceedings{yuan2020dlow,
title={Dlow: Diversifying latent flows for diverse human motion prediction},
author={Yuan, Ye and Kitani, Kris},
booktitle={Proceedings of the European Conference on Computer Vision (ECCV)},
year={2020}
}
Acknowledgement
Part of the code is borrowed from the VideoPose3D repo.
License
The software in this repo is freely available for free non-commercial use. Please see the license for further details.
About
[ECCV 2020] Official PyTorch Implementation of "DLow: Diversifying Latent Flows for Diverse Human Motion Prediction". ECCV 2020.