Generative Models as a Data Source for Multiview Representation Learning

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Deep LearningGenRep
Overview

GenRep

Project Page | Paper

Generative Models as a Data Source for Multiview Representation Learning
Ali Jahanian, Xavier Puig, Yonglong Tian, Phillip Isola

Prerequisites

  • Linux
  • Python 3
  • CPU or NVIDIA GPU + CUDA CuDNN

Table of Contents:

  1. Setup
  2. Visualizations - plotting image panels, videos, and distributions
  3. Training - pipeline for training your encoder
  4. Testing - pipeline for testing/transfer learning your encoder
  5. Notebooks - some jupyter notebooks, good place to start for trying your own dataset generations
  6. Colab Demo - a colab notebook to demo how the contrastive encoder training works

Setup

  • Clone this repo:
git clone https://github.com/ali-design/GenRep
  • Install dependencies:
    • we provide a Conda environment.yml file listing the dependencies. You can create a Conda environment with the dependencies using:
conda env create -f environment.yml
  • Download resources:
    • we provide a script for downloading associated resources. Fetch these by running:
bash resources/download_resources.sh

Visualizations

Plotting contrasting images:

  • Run simclr_views_paper_figure.ipynb and supcon_views_paper_figure.ipynb to get the anchors and their contrastive pairs showin in the paper.

  • To generate more images run biggan_generate_samples_paper_figure.py.


Training encoders

  • The current implementation covers these variants:
    • Contrastive (SimCLR and SupCon)
    • Inverters
    • Classifiers
  • Some examples of commands for training contrastive encoders:
# train a SimCLR on an unconditional IGM dataset (e.g. your dataset is generated by a Gaussian walk, called my_gauss in a GANs model)
CUDA_VISIBLE_DEVICES=0,1 python main_unified.py --method SimCLR --cosine \ 
	--dataset path_to_your_dataset --walk_method my_gauss \ 
	--cache_folder your_ckpts_path >> log_train_simclr.txt &

# train a SupCon on a conditional IGM dataset (e.g. your dataset is generated by steering walks, called my_steer in a GANs model)
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 &
  • If you want to find out more about training configurations, you can find the yml file of each pretrained models in models_pretrained

Testing encoders

  • You can currently test (i.e. trasfer learn) your encoder on:
    • ImageNet linear classification
    • PASCAL classification
    • PASCAL detection

Imagenet linear classification

Below is the command to train a linear classifier on top of the features learned

# test your unconditional or conditional IGM trained model (i.e. the encoder you trained in the previous section) on ImageNet
CUDA_VISIBLE_DEVICES=0,1 python main_linear.py --learning_rate 0.3 \ 
	--ckpt path_to_your_encoder --data_folder path_to_imagenet \
	>> log_test_your_model_name.txt &

Pascal VOC2007 classification

To test classification on PascalVOC, you will extract features from a pretrained model and run an SVM on top of the futures. You can do that running the following code:

cd transfer_classification
./run_svm_voc.sh 0 path_to_your_encoder name_experiment path_to_pascal_voc

The code is based on FAIR Self-Supervision Benchmark

Pascal VOC2007 detection

To test transfer in detection experiments do the following:

  1. Enter into transfer_detection
  2. Install detectron2, replacing the detectron2 folder.
  3. Convert the checkpoints path_to_your_encoder to detectron2 format:
python convert_ckpt.py path_to_your_encoder output_ckpt.pth
  1. Add a symlink from the PascalVOC07 and PascalVOC12 into the datasets folder.
  2. Train the detection model:
CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 python train_net.py \
      --num-gpus 8 \
      --config-file config/pascal_voc_R_50_C4_transfer.yaml \
      MODEL.WEIGHTS ckpts/${name}.pth \
      OUTPUT_DIR outputs/${name}

Notebooks

source activate genrep_env
python -m ipykernel install --user --name genrep_env

Colab

git Acknowledgements

We thank the authors of these repositories:

Citation

If you use this code for your research, please cite our paper:

@article{jahanian2021generative, 
	title={Generative Models as a Data Source for Multiview Representation Learning}, 
	author={Jahanian, Ali and Puig, Xavier and Tian, Yonglong and Isola, Phillip}, 
	journal={arXiv preprint arXiv:2106.05258}, 
	year={2021} 
}
Owner
Ali
Research scientist @ MIT.
Ali
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