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| A CVPR 2022 paper: |
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| > Preechakul, Konpat, Nattanat Chatthee, Suttisak Wizadwongsa, and Supasorn Suwajanakorn. 2021. “Diffusion Autoencoders: Toward a Meaningful and Decodable Representation.” arXiv [cs.CV]. arXiv. http://arxiv.org/abs/2111.15640. |
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| Note: Since we expect a lot of changes on the codebase, please fork the repo before using. |
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| See `requirements.txt` |
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| ``` |
| pip install -r requirements.txt |
| ``` |
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| A jupyter notebook. |
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| For unconditional generation: `sample.ipynb` |
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| For manipulation: `manipulate.ipynb` |
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| Aligning your own images: |
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| 1. Put images into the `imgs` directory |
| 2. Run `align.py` (need to `pip install dlib requests`) |
| 3. Result images will be available in `imgs_align` directory |
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| <style type="text/css"> |
| img { |
| height: 256px; |
| } |
| </style> |
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| We provide checkpoints for the following models: |
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| 1. DDIM: **FFHQ128** ([72M](https://drive.google.com/drive/folders/1-J8FPNZOQxSqpfTpwRXawLi2KKGL1qlK?usp=sharing), [130M](https://drive.google.com/drive/folders/17T5YJXpYdgE6cWltN8gZFxRsJzpVxnLh?usp=sharing)), [**Bedroom128**](https://drive.google.com/drive/folders/19s-lAiK7fGD5Meo5obNV5o0L3MfqU0Sk?usp=sharing), [**Horse128**](https://drive.google.com/drive/folders/1PiC5JWLcd8mZW9cghDCR0V4Hx0QCXOor?usp=sharing) |
| 2. DiffAE (autoencoding only): [**FFHQ256**](https://drive.google.com/drive/folders/1hTP9QbYXwv_Nl5sgcZNH0yKprJx7ivC5?usp=sharing), **FFHQ128** ([72M](https://drive.google.com/drive/folders/15QHmZP1G5jEMh80R1Nbtdb4ZKb6VvfII?usp=sharing), [130M](https://drive.google.com/drive/folders/1UlwLwgv16cEqxTn7g-V2ykIyopmY_fVz?usp=sharing)), [**Bedroom128**](https://drive.google.com/drive/folders/1okhCb1RezlWmDbdEAGWMHMkUBRRXmey0?usp=sharing), [**Horse128**](https://drive.google.com/drive/folders/1Ujmv3ajeiJLOT6lF2zrQb4FimfDkMhcP?usp=sharing) |
| 3. DiffAE (with latent DPM, can sample): [**FFHQ256**](https://drive.google.com/drive/folders/1MonJKYwVLzvCFYuVhp-l9mChq5V2XI6w?usp=sharing), [**FFHQ128**](https://drive.google.com/drive/folders/1E3Ew1p9h42h7UA1DJNK7jnb2ERybg9ji?usp=sharing), [**Bedroom128**](https://drive.google.com/drive/folders/1okhCb1RezlWmDbdEAGWMHMkUBRRXmey0?usp=sharing), [**Horse128**](https://drive.google.com/drive/folders/1Ujmv3ajeiJLOT6lF2zrQb4FimfDkMhcP?usp=sharing) |
| 4. DiffAE's classifiers (for manipulation): [**FFHQ256's latent on CelebAHQ**](https://drive.google.com/drive/folders/1QGkTfvNhgi_TbbV8GbX1Emrp0lStsqLj?usp=sharing), [**FFHQ128's latent on CelebAHQ**](https://drive.google.com/drive/folders/1E3Ew1p9h42h7UA1DJNK7jnb2ERybg9ji?usp=sharing) |
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| Checkpoints ought to be put into a separate directory `checkpoints`. |
| Download the checkpoints and put them into `checkpoints` directory. It should look like this: |
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| ``` |
| checkpoints/ |
| - bedroom128_autoenc |
| - last.ckpt |
| - latent.ckpt |
| - bedroom128_autoenc_latent |
| - last.ckpt |
| - bedroom128_ddpm |
| - ... |
| ``` |
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| We do not own any of the following datasets. We provide the LMDB ready-to-use dataset for the sake of convenience. |
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| - [FFHQ](https://drive.google.com/drive/folders/1ww7itaSo53NDMa0q-wn-3HWZ3HHqK1IK?usp=sharing) |
| - [CelebAHQ](https://drive.google.com/drive/folders/1SX3JuVHjYA8sA28EGxr_IoHJ63s4Btbl?usp=sharing) |
| - [CelebA](https://drive.google.com/drive/folders/1HJAhK2hLYcT_n0gWlCu5XxdZj-bPekZ0?usp=sharing) |
| - [LSUN Bedroom](https://drive.google.com/drive/folders/1O_3aT3LtY1YDE2pOQCp6MFpCk7Pcpkhb?usp=sharing) |
| - [LSUN Horse](https://drive.google.com/drive/folders/1ooHW7VivZUs4i5CarPaWxakCwfeqAK8l?usp=sharing) |
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| The directory tree should be: |
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| ``` |
| datasets/ |
| - bedroom256.lmdb |
| - celebahq256.lmdb |
| - celeba.lmdb |
| - ffhq256.lmdb |
| - horse256.lmdb |
| ``` |
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| You can also download from the original sources, and use our provided codes to package them as LMDB files. |
| Original sources for each dataset is as follows: |
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| - FFHQ (https://github.com/NVlabs/ffhq-dataset) |
| - CelebAHQ (https://github.com/switchablenorms/CelebAMask-HQ) |
| - CelebA (https://mmlab.ie.cuhk.edu.hk/projects/CelebA.html) |
| - LSUN (https://github.com/fyu/lsun) |
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| The conversion codes are provided as: |
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| ``` |
| data_resize_bedroom.py |
| data_resize_celebhq.py |
| data_resize_celeba.py |
| data_resize_ffhq.py |
| data_resize_horse.py |
| ``` |
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| Google drive: https://drive.google.com/drive/folders/1abNP4QKGbNnymjn8607BF0cwxX2L23jh?usp=sharing |
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| We provide scripts for training & evaluate DDIM and DiffAE (including latent DPM) on the following datasets: FFHQ128, FFHQ256, Bedroom128, Horse128, Celeba64 (D2C's crop). |
| Usually, the evaluation results (FID's) will be available in `eval` directory. |
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| Note: Most experiment requires at least 4x V100s during training the DPM models while requiring 1x 2080Ti during training the accompanying latent DPM. |
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| **FFHQ128** |
| ``` |
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| python run_ffhq128.py |
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| python run_ffhq128_ddim.py |
| ``` |
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| A classifier (for manipulation) can be trained using: |
| ``` |
| python run_ffhq128_cls.py |
| ``` |
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| **FFHQ256** |
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| We only trained the DiffAE due to high computation cost. |
| This requires 8x V100s. |
| ``` |
| sbatch run_ffhq256.py |
| ``` |
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| After the task is done, you need to train the latent DPM (requiring only 1x 2080Ti) |
| ``` |
| python run_ffhq256_latent.py |
| ``` |
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| A classifier (for manipulation) can be trained using: |
| ``` |
| python run_ffhq256_cls.py |
| ``` |
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| **Bedroom128** |
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| ``` |
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| python run_bedroom128.py |
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| python run_bedroom128_ddim.py |
| ``` |
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| **Horse128** |
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| ``` |
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| python run_horse128.py |
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| python run_horse128_ddim.py |
| ``` |
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| **Celeba64** |
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| This experiment can be run on 2080Ti's. |
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| ``` |
| # diffae |
| python run_celeba64.py |
| ``` |