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[ECCV 2020] Code for "Spatio-Temporal Graph Transformer Networks for Pedestrian Trajectory Prediction"

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STAR

Code for Spatio-Temporal Graph Transformer Networks for Pedestrian Trajectory Prediction

Environment

pip install numpy==1.18.1
pip install torch==1.7.0
pip install pyyaml=5.3.1
pip install tqdm=4.45.0

Train

The Default settings are to train on ETH-univ dataset.

Data cache and models will be stored in the subdirectory "./output/eth/" by default. Notice that for this repo, we only provide implementation on GPU.

git clone https://github.com/Majiker/STAR.git
cd STAR
python trainval.py --test_set <dataset to evaluate> --start_test <epoch to start test>

Configuration files are also created after the first run, arguments could be modified through configuration files or command line. Priority: command line > configuration files > default values in script.

The datasets are selected on arguments '--test_set'. Five datasets in ETH/UCY including [eth, hotel, zara1, zara2, univ].

Example

This command is to train model for ETH-hotel and start test at epoch 10. For different dataset, change 'hotel' to other datasets named in the last section.

python trainval.py --test_set hotel --start_test 50

During training, the model for Best FDE on the corresponding test dataset would be record.

Cite STAR

If you find this repo useful, please consider citing our paper

@inproceedings{
    YuMa2020Spatio,
    title={Spatio-Temporal Graph Transformer Networks for Pedestrian Trajectory Prediction},
    author={Cunjun Yu and Xiao Ma and Jiawei Ren and Haiyu Zhao and Shuai Yi},
    booktitle={Proceedings of the European Conference on Computer Vision (ECCV)},
    month = {August},
    year={2020}
}

Reference

The code base heavily borrows from SR-LSTM

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[ECCV 2020] Code for "Spatio-Temporal Graph Transformer Networks for Pedestrian Trajectory Prediction"

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