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Collection of awesome test-time (domain/batch/instance) adaptation methods

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Awesome Test-Time Adaptation Awesome

A curated list of awesome test-time (domain/ batch/ instance/ online/ prior) adaptation resources. Your contributions are always welcome!

Problem

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Contents

Datasets

A list of commonly used datasets in TTA is available in Google Sheets.

Citation

If you find our survey and repository useful for your research, please consider citing our paper:

@article{liang2023ttasurvey,
  title={A Comprehensive Survey on Test-Time Adaptation under Distribution Shifts},
  author={Liang, Jian and He, Ran and Tan, Tieniu},
  journal={International Journal Of Computer Vision},
  year={2023}
}

Surveys and benchmarks

  • ... [Liang et al., IJCV 2024] A comprehensive survey on test-time adaptation under distribution shifts [PDF] [G-Scholar]

  • ... [Liu et al., arXiv 2021] Data-free knowledge transfer: A survey [PDF] [G-Scholar]

  • ... [Zhang et al., Neurocomputing 2023] Source-free unsupervised domain adaptation: Current research and future directions [PDF] [G-Scholar]

  • ... [Fang et al., Neural Networks 2024] Source-free unsupervised domain adaptation: A survey [PDF] [G-Scholar]

  • ... [Li et al., IEEE TPAMI 2024] A comprehensive survey on source-free domain adaptation [PDF] [G-Scholar]

  • ... [Wang et al., IJCV 2024] In search of lost online test-time adaptation: A survey [PDF] [G-Scholar]

  • ... [Xiao and Snoek, arXiv 2024] Beyond model adaptation at test time: A survey [PDF] [G-Scholar--]

  • ... [Yu et al., arXiv 2023] Benchmarking test-time adaptation against distribution shifts in image classification [PDF] [G-Scholar] [CODE]