Thanks to visit codestin.com
Credit goes to github.com

Skip to content

Official code of "Discover and Mitigate Unknown Biases with Debiasing Alternate Networks" (ECCV 2022)

License

Notifications You must be signed in to change notification settings

zhihengli-UR/DebiAN

Repository files navigation

Discover and Mitigate Unknown Biases with Debiasing Alternate Networks [ECCV 2022]

Paper

Zhiheng Li, Anthony Hoogs, Chenliang Xu

University of Rochester, Kitware, Inc.

Contact: Zhiheng Li (email: [email protected], homepage: https://zhiheng.li)

abdf

TL;DR: We introduce Debiasing Alternate Networks (DebiAN) to discover and mitigate unknown biases of an image classifier. DebiAN alternately trains two networks—a discover and a classifier. Discoverer actively identifies classifier’s unknown biases. At the same time, the classifier mitigates the biases identified by the discoverer.

Multi-Color MNIST Dataset

abdf

In this work, we propose the Multi-Color MNIST dataset to better benchmark debiasing methods under the multi-bias setting. It contains two bias attributes—left color and right color.

Download and Untar Multi-Color MNIST Dataset

cd data

wget https://github.com/zhihengli-UR/DebiAN/releases/download/v1.0/multi_color_mnist.tar.gz -O multi_color_mnist.tar.gz

tar xvzf multi_color_mnist.tar.gz

Generate Multi-Color MNIST Dataset

If you want to generate other bias-aligned ratio combinations between left color and right color bias attributes, you can use the following command:

bash scripts/make_multi_color_mnist.sh

Data Preparation

Put each dataset in a folder under the data directory as follows:

data
├── bar
├── bffhq
├── celeba
├── lsun
├── multi_color_mnist
└── places365

Biased Action Recognition (BAR): download BAR dataset from here and unzip it to data/bar

bFFHQ: download bFFHQ dataset from here and unzip it to data/bffhq

CelebA: download CelebA dataset from here and unzip it to data/celeba

LSUN: download the LSUN dataset from here and unzip it to data/lsun

Places365: download the Places365 dataset from here and unzip it to data/places365

Dependencies

pytorch

torchvision

lmdb

imageio

Training and Evaluation

bash scripts/${DATASET_NAME}_debian.sh  # ${DATASET_NAME} = bar, bffhq, celeba_blond, celeba_gender, multi_color_mnist, or scene

Add your method

This code base can be used to add future methods for training and evaluation. To achieve that, simply create a new Trainer class for your method that inherits the BaseTrainer class in each experiment folder (e.g., bffhq_exp).

Citation

Please cite our work if you use DebiAN or the Multi-Color MNIST dataset.

@inproceedings{Li_2022_ECCV,
  title = {Discover and {{Mitigate Unknown Biases}} with {{Debiasing Alternate Networks}}},
  booktitle = {The {{European Conference}} on {{Computer Vision}} ({{ECCV}})},
  author = {Li, Zhiheng and Hoogs, Anthony and Xu, Chenliang},
  year = {2022}
}

About

Official code of "Discover and Mitigate Unknown Biases with Debiasing Alternate Networks" (ECCV 2022)

Topics

Resources

License

Stars

Watchers

Forks

Packages

No packages published