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Datasets and Code for "Beyond Scalar Neuron: Adopting Vector-Neuron Capsules for Long-Term Person Re-Identification" and "Celebrities-ReID: A Benchmark for Clothes Variation in Long-Term Person Re-Identification"

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Celeb-reID

This repository contains Datasets and Code for our paper Beyond Scalar Neuron: Adopting Vector-Neuron Capsules for Long-Term Person Re-Identification and Celebrities-ReID: A Benchmark for Clothes Variation in Long-Term Person Re-Identification.

1.Dataset

You can directly download our datasets from OneDrive Celeb-reID and its light version Celeb-reID-light.

Baidu Cloud Link:

For Celeb-reID: Link:https://pan.baidu.com/s/1sKkO4l8FyzM7iXnzjPyWHQ code:ix2j

For Celeb-reID-light: Link:https://pan.baidu.com/s/13DSJ1PK_AEF9TEGi30eIQA code:14k5

The data split of Celeb-reID is as follows:

split training query gallery total
#ID 632 420 420 1,052
#Images 20,208 2,972 11,006 34,186

The data split of Celeb-reID-light is as follows:

split training query gallery total
#ID 490 100 100 590
#Images 9021 887 934 10,842

Note: The two datasets should be used for research only. Please DO NOT distribute or use it for commercial purpose.

2.Code

Our code (ReIDCaps) is implemented by Pytorch(>=1.0.0) and python(anaconda 3.6) with Ubuntu.

To run the training code:

First: Download the Celeb-reID dataset to your own path. Do body part partition by copying the part_partition.m file to the path of your dataset. Changing name=gallery, name=query, and name=train to get the body part partition files in the path of your Celeb-reID dataset.

Second: Directly run the run_train.sh by bash ./run_train.sh on console. You may change the path of dataset in the file of run_train.sh according to your own path.

To run the testing code:

Just simply run the 'test.py' file. You may change the path of dataset and logs(the path of trained model) according to your own path.

You can also directly download our trained_model to get the perfomance reported in our paper Beyond Scalar Neuron: Adopting Vector-Neuron Capsules for Long-Term Person Re-Identification, TCSVT2019(see Table VII ReIDCaps*(ours)).

Method mAP rank-1 rank-5
ReIDCaps*(Ours) 15.8% 63.0% 76.3%

Citation

Please cite this paper in your publications if it helps your research:

@article{huang2019beyond,
  title={Beyond Scalar Neuron: Adopting Vector-Neuron Capsules for Long-Term Person Re-Identification},
  author={Huang, Yan and Xu, Jingsong and Wu, Qiang and Zhong, Yi and Zhang, Peng and Zhang, Zhaoxiang},
  journal={Transactions on Circuits and Systems for Video Technology (TCSVT)},
  year={2019},
  publisher={IEEE}
}

@inproceedings{huang2021clothing,
  title={Clothing status awareness for long-term person re-identification},
  author={Huang, Yan and Wu, Qiang and Xu, JingSong and Zhong, Yi and Zhang, ZhaoXiang},
  booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision},
  pages={11895--11904},
  year={2021}
}

@inproceedings{huang2019celebrities,
  title={Celebrities-ReID: A Benchmark for Clothes Variation in Long-Term Person Re-Identification},
  author={Huang, Yan and Wu, Qiang and Xu, Jingsong and Zhong, Yi},
  booktitle={International Joint Conference on Neural Networks (IJCNN)},
  pages={1--8},
  year={2019},
  organization={IEEE}
}

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Datasets and Code for "Beyond Scalar Neuron: Adopting Vector-Neuron Capsules for Long-Term Person Re-Identification" and "Celebrities-ReID: A Benchmark for Clothes Variation in Long-Term Person Re-Identification"

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