This repo has the code for the paper "Dont Drop Your samples: Coherence-aware training benefits Condition Diffusion" accepted at CVPR 2024 as a Highlight.
The core idea is that diffusion model is usually trained on noisy data. The usual solution is to filter massive datapools. We propose a new training method that leverages the coherence of the data to improve the training of diffusion models. We show that this method improves the quality of the generated samples on several datasets.
Project website: https://nicolas-dufour.github.io/cad
To install, first create a conda env with python 3.9/3.10
conda create -n cad python=3.10
Activate the env
conda activate cad
Then run
pip install -r requirements.txt
Depending of your CUDA version be careful installing torch.
This repo is based around Hydra and requires to specify an override such as:
python train.py overrides=imagenet_64_rin **Other hydra args**
You can use the default or create your own override to train the desired model.
Downlowad the datasets and add them in /datasets
. A few presets are already defined in the configs/data
folder (Imagenet, CIFAR-10, LAION Aesthetic 6+ and CC12M)
To add a custom dataset, create a new config file in configs/data
and add the dataset to the datasets
folder.
This repo supports both Pytorch Datasets and Webdatasets.
To preprocess the LAION Aesthetic 6+ and CC12M datasets, you can use the following command:
python data/processing_scripts/preprocess_data.py --src path_to_src_wds --dest path_to_dst_wds --shard_id number_of_the_shard
This is better used with a cluster to preprocess the data in parallel with job array.
To train CAD on Imagenet you can use the following command:
python train.py overrides=imagenet_64_rin_cad
For CIFAR-10:
python train.py overrides=cifar10_rin_cad
As a side contribution, we also provide a new text-to-image model called TextRIN. This model is based on RIN and is conditioned on text.
To train TextRIN with CAD on LAION Aesthetic 6+ and CC12M you can use the following command:
python train.py overrides=cc12m_256_rin_tiny_ldm_cad
To train TextRIN without CAD on LAION Aesthetic 6+ and CC12M you can use the following command:
python train.py overrides=cc12m_256_rin_tiny_ldm
This repo also features a reproduction of RIN for Imagenet-64 and CIFAR-10. To train RIN on Imagenet-64 you can use the following command:
python train.py overrides=imagenet_64_rin
For CIFAR-10:
python train.py overrides=cifar10_rin
Coming soon
If you happen to use this repo in your experiments, you can acknowledge us by citing the following paper:
@article{dufour2024dont,
title={Don’t drop your samples! Coherence-aware training benefits Conditional diffusion},
author={Nicolas Dufour and Victor Besnier and Vicky Kalogeiton and David Picard},
journal={CVPR}
year={2024}
}