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Generative Models as a Data Augmentation for Classification

License: MIT

Teammate

Introduction

This repository is the implementation of final project for 5003 Deep Learning and Practice course in 2021 summer semester at National Yang Ming Chiao Tung University.

In this final project we use GAN steerability as an data augmentation technique. The inspiration is coming from GAN steerability, and GenRep these two papers. In this project, we investigate image transformation by exploring walks in the latent space of GAN. And we conclude that GAN steerability is a better data augmentation technique compare to transformation done in the data space

Getting the code

You can download a copy of all the files in this repository by cloning this repository:

git clone https://github.com/joycenerd/genrep_aug.git

Requirements

You need to have Anaconda or Miniconda already installed in your environment. To install requirements:

cd GenRep
conda env create -f environment.yml

GAN steer

1. Train BigGAN steerability

cd GenRep/utils
python biggan_steer_train.py

2. Generate augmented images

cd GenRep/utils
python generate_dataset_biggan_steer.py

Mix data

1. Choose 1300 augmented images

cd GenRep/utils
python extract_data.py

2. Merge real and augmented data

cd GenRep/utils
python merge_real_gen.py

Train encoders

cd GenRep
CUDA_VISIBLE_DEVICES=0,1 python main_unified.py --method SupCon --cosine \
	--dataset path_to_your_dataset --walk_method my_steer \ 
	--cache_folder your_ckpts_path >> log_train_supcon.txt &

Linear classification

cd GenRep
CUDA_VISIBLE_DEVICES=0,1 python mylinear.py --learning_rate 0.3 \ 
	--ckpt path_to_your_encoder --data_folder path_to_imagenet \
	>> log_test_your_model_name.txt &

Results

GitHub Acknowledgement

We thank the authors of these repositories:

Citation

If you find our work useful in your project, please cite:

@misc{
    title = {Generative Models as a Data Augmentation for Classification},
    author = {Zhi-Yi Chin, Chieh-Ming Jiang},
    url = {https://github.com/joycenerd/genrep_aug.git},
    year = {2021}
}

Contributing

If you'd like to contribute, or have any suggestions, you can contact us at joycenerd.cs09@nycu.edu.tw or open an issue on this GitHub repository.

All contributions welcome! All content in this repository is licensed under the MIT license.