Skip to content

wangke97/CLAD

Repository files navigation

CLAD: A Contrastive Learning based Approach for Background Debiasing


This repository contains codes for CLAD: A Contrastive Learning based Approach for Background Debiasing (BMVC 2022).

We propose a contrastive learning framework, CLAD, for reducing the effect of image background in image classification. Through design of contrastive samples, CLAD is trained to encourage semantic focus on object foregrounds and penalize using features from the background. Please follow the following steps.


Setup

Install requirements: pip install -r requirements.txt

Download datasets: We evaluate our method on the ImageNet-9 dataset, and created two foreground sets, with either GrabCut or U2-Net, by segmentation on the original images (for the train set ONLY). The dataset can be downloaded here, and unzipped to the datasets directiory.

Note that if you are using the original ImageNet-9 dataset, we suggest you to generate the foreground segmentations yourself with either GrabCut or U2-Net as we described in the paper rather than directly use the one in ImageNet-9 dataset, as the original ImageNet-9 dataset is saved in JPEG version which lowers the image quality and introduces noise in inpaiting foreground when generating positive samples.


Usage

Train and evaluate model with the following commands.
  • Train baseline: python main_clad_bg.py --with_con_loss 0
  • Train CLAD: python main_clad_bg.py --with_con_loss 1
  • Train CLAD+: python main_clad_bg.py --with_con_loss 1 --with_pos_loss 1

Results

Results for seed set to 42:

Model\Dataset Original Only-foreground Random-background Same-background Background gap (↓) Only-background (↓)
Baseline 0.962 0.864 0.751 0.882 0.131 0.443
CLAD 0.958 0.944 0.888 0.910 0.022 0.345
CLAD+ 0.945 0.944 0.890 0.906 0.016 0.227

Citation

@article{wang2022clad,
  title={CLAD: A Contrastive Learning based Approach for Background Debiasing},
  author={Wang, Ke and Machiraju, Harshitha and Choung, Oh-Hyeon and Herzog, Michael and Frossard, Pascal},
  journal={arXiv preprint arXiv:2210.02748},
  year={2022}
}

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages