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[New Model] RodriguezMunoz2024Characterizing #195

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3 tasks done
adriarm opened this issue Oct 15, 2024 · 3 comments
Open
3 tasks done

[New Model] RodriguezMunoz2024Characterizing #195

adriarm opened this issue Oct 15, 2024 · 3 comments
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new-model Addition of a new model to the Leaderboard/Model Zoo

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@adriarm
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adriarm commented Oct 15, 2024

Paper Information

  • Paper Title: Characterizing Model Robustness via Natural Input Gradients
  • Paper URL: https://arxiv.org/pdf/2409.20139
  • Paper authors: Adrián Rodríguez-Muñoz, Tongzhou Wang, Antonio Torralba

The focus of the paper is on efficient robust training using gradient regularisation, and showing it is surprisingly effective on ImageNet.

Leaderboard Claim(s)

Our model can be instantiated and benchmarked by:

  1. Cloning our code and following environment install instructions.
  2. Downloading our checkpoint
  3. Setting data_dir, arch and ckpt_location in benchmark_model.py
  4. Running benchmark_model.py

The models use the Swin architecture from the old timm==0.6.7 version. If it is preferred for me to write the pull request, please let me know what the best way to implement it is.

Model 1

  • Architecture: Swin-B (from timm==0.6.7, same as Liu2023Comprehensive)
  • Threat Model: Linf
  • eps: 4 / 255
  • Clean accuracy: 77.76
  • Robust accuracy: 51.56
  • Additional data: False
  • Evaluation method: AutoAttack
  • Checkpoint and code: Checkpoint and code.

Model 2

  • Architecture: Swin-L (from timm==0.6.7, same as Liu2023Comprehensive)
  • Threat Model: Linf
  • eps: 4 / 255
  • Clean accuracy: 79.36
  • Robust accuracy: 53.82
  • Additional data: False
  • Evaluation method: AutoAttack
  • Checkpoint and code: Checkpoint and code.

Model Zoo:

  • I want to add my models to the Model Zoo (check if true)
  • I use an architecture that is included among
    those here or in timm. If not, I added the link to the architecture implementation so that it can be added.
  • I agree to release my model(s) under MIT license (check if true) OR under a custom license, located here: (put the custom license URL here if a custom license is needed. If no URL is specified, we assume that you are fine with MIT)
@adriarm adriarm added the new-model Addition of a new model to the Leaderboard/Model Zoo label Oct 15, 2024
@fra31
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fra31 commented Oct 16, 2024

Hi,

thanks for the submission! I'll try to add the models in the next days.

@adriarm
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adriarm commented Nov 20, 2024

Perfect, thank you so much! When do you think the models will be able to appear on the leaderboard? Please let me know if there are any issues.

@fra31
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fra31 commented Dec 20, 2024

Added the models with #202, please let me know if it's fine for you.

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Labels
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