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ReSSL: Relational Self-Supervised Learning with Weak Augmentation

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ReSSL: Relational Self-Supervised Learning with Weak Augmentation

This repository contains PyTorch evaluation code, training code and pretrained models for ReSSL.

For details see ReSSL: Relational Self-Supervised Learning with Weak Augmentation by Mingkai Zheng, Shan You, Fei Wang, Chen Qian, Changshui Zhang, Xiaogang Wang and Chang Xu

ReSSL

Reproducing

To run the code, you probably need to change the Dataset setting (dataset/imagenet.py), and Pytorch DDP setting (util/dist_init.py) for your own server enviroments.

The distribued training of this code is base on slurm enviroments, we have provide the training scrips under the script folder.

We also provide the pretrained model for ResNet50 (single crop and 5 crops)

Arch BatchSize Epochs Crops Linear Eval Download
ReSSL ResNet50 256 200 1 69.9 % ressl-200.pth
ReSSL ResNet50 256 200 5 74.7 % ressl-multi-200.pth

If you want to test the pretained model, please download the weights from the link above, and move it to the checkpoints folder (create one if you don't have .checkpoints/ directory). The evaluation scripts also has been provided in script/train.sh

Citation

If you find that ReSSL interesting and help your research, please consider citing it:

@misc{zheng2021ressl,
      title={ReSSL: Relational Self-Supervised Learning with Weak Augmentation}, 
      author={Mingkai Zheng and Shan You and Fei Wang and Chen Qian and Changshui Zhang and Xiaogang Wang and Chang Xu},
      year={2021},
      eprint={2107.09282},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}

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