Skip to content

1Konny/Beta-VAE

Folders and files

NameName
Last commit message
Last commit date

Latest commit

977a1ec · Aug 26, 2018

History

54 Commits
May 23, 2018
Jun 28, 2018
May 23, 2018
Aug 26, 2018
May 2, 2018
Jun 1, 2018
May 23, 2018
May 23, 2018
May 23, 2018
May 23, 2018
May 23, 2018
May 23, 2018
Aug 26, 2018
May 22, 2018

Repository files navigation

β-VAE

Pytorch reproduction of two papers below:

  1. β-VAE: Learning Basic Visual Concepts with a Constrained Variational Framework, Higgins et al., ICLR, 2017
  2. Understanding disentangling in β-VAE, Burgess et al., arxiv:1804.03599, 2018

Dependencies

python 3.6.4
pytorch 0.3.1.post2
visdom

Datasets

same with here

Usage

initialize visdom

python -m visdom.server

you can reproduce results below by

sh run_celeba_H_beta10_z10.sh
sh run_celeba_H_beta10_z32.sh
sh run_3dchairs_H_beta4_z10.sh
sh run_3dchairs_H_beta4_z16.sh
sh run_dsprites_B_gamma100_z10.sh

or you can run your own experiments by setting parameters manually.
for objective and model arguments, you have two options H and B indicating methods proposed in Higgins et al. and Burgess et al., respectively.
arguments --C_max and --C_stop_iter should be set when --objective B. for further details, please refer to Burgess et al.

e.g.
python main.py --dataset 3DChairs --beta 4 --lr 1e-4 --z_dim 10 --objective H --model H --max_iter 1e6 ...
python main.py --dataset dsprites --gamma 1000 --C_max 25 --C_stop_iter 1e5 --lr 5e-4 --z_dim 10 --objective B --model B --max_iter 1e6 ...

check training process on the visdom server

localhost:8097

Results

3D Chairs

sh run_3dchairs_H_beta4_z10.sh

3dchairs_beta4_z16

sh run_3dchairs_H_beta4_z16.sh

3dchairs_beta4_z16

CelebA

sh run_celeba_H_beta10_z10.sh

celeba

sh run_celeba_H_beta10_z32.sh

celeba

dSprites

sh run_dsprites_B.sh
visdom line plot

dsprites_plot

latent traversal gif(--save_output True)

##### reconstruction(left: true, right: reconstruction)

Reference

  1. β-VAE: Learning Basic Visual Concepts with a Constrained Variational Framework, Higgins et al., ICLR, 2017
  2. Understanding disentangling in β-VAE, Burgess et al., arxiv:1804.03599, 2018
  3. Github Repo: Tensorflow implementation from miyosuda