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(CVPR 2024) 🧩 TokenCompose: Grounding Diffusion with Token-level Supervision

Project README

🧩 TokenCompose: Grounding Diffusion with Token-level Supervision

Zirui Wang1, 3 · Zhizhou Sha2, 3 · Zheng Ding3 · Yilin Wang2, 3 · Zhuowen Tu3

1Princeton University · 2Tsinghua University · 3University of California, San Diego

CVPR 2024

Project done while Zirui Wang, Zhizhou Sha and Yilin Wang interned at UC San Diego.

Project Page | arXiv | X (Twitter)

Updates

If you use our method and/or model for your research project, we are happy to provide cross-reference here in the updates. :)

[04/04/2024] 🔥 Our training methodology is incorporated into CoMat which shows enhanced text-to-image attribute assignments.
[02/26/2024] 🔥 TokenCompose is accepted to CVPR 2024!
[02/20/2024] 🔥 TokenCompose is used as a base model from the RealCompo paper for enhanced compositionality.

https://github.com/mlpc-ucsd/TokenCompose/assets/59942464/93feea16-4eac-49c3-b286-ee390a325b17

A Stable Diffusion model finetuned with token-level grounding objectives for enhanced multi-category instance composition and photorealism.


Logo
Method Multi-category Instance Composition Photorealism Efficiency
Object Accuracy COCO ADE20K FID (COCO) FID (Flickr30K) Latency
MG2 MG3 MG4 MG5 MG2 MG3 MG4 MG5
SD 1.4 29.86 90.721.33 50.740.89 11.680.45 0.880.21 89.810.40 53.961.14 16.521.13 1.890.34 20.88 71.46 7.540.17
Composable 27.83 63.330.59 21.871.01 3.250.45 0.230.18 69.610.99 29.960.84 6.890.38 0.730.22 - 75.57 13.810.15
Layout 43.59 93.220.69 60.151.58 19.490.88 2.270.44 96.050.34 67.830.90 21.931.34 2.350.41 - 74.00 18.890.20
Structured 29.64 90.401.06 48.641.32 10.710.92 0.680.25 89.250.72 53.051.20 15.760.86 1.740.49 21.13 71.68 7.740.17
Attn-Exct 45.13 93.640.76 65.101.24 28.010.90 6.010.61 91.740.49 62.510.94 26.120.78 5.890.40 - 71.68 25.434.89
TokenCompose (Ours) 52.15 98.080.40 76.161.04 28.810.95 3.280.48 97.750.34 76.931.09 33.921.47 6.210.62 20.19 71.13 7.560.14

🆕 Models

Stable Diffusion Version Checkpoint 1 Checkpoint 2
v1.4 TokenCompose_SD14_A TokenCompose_SD14_B
v2.1 TokenCompose_SD21_A TokenCompose_SD21_B

Our finetuned models do not contain any extra modules and can be directly used in a standard diffusion model library (e.g., HuggingFace's Diffusers) by replacing the pretrained U-Net with our finetuned U-Net in a plug-and-play manner. We provide a demo jupyter notebook which uses our model checkpoint to generate images.

You can also use the following code to download our checkpoints and generate images:

import torch
from diffusers import StableDiffusionPipeline

model_id = "mlpc-lab/TokenCompose_SD14_A"
device = "cuda"

pipe = StableDiffusionPipeline.from_pretrained(model_id, torch_dtype=torch.float32)
pipe = pipe.to(device)

prompt = "A cat and a wine glass"
image = pipe(prompt).images[0]  
    
image.save("cat_and_wine_glass.png")

📊 MultiGen

See MultiGen for details.

Method COCO ADE20K
MG2 MG3 MG4 MG5 MG2 MG3 MG4 MG5
SD 1.4 90.721.33 50.740.89 11.680.45 0.880.21 89.810.40 53.961.14 16.521.13 1.890.34
Composable 63.330.59 21.871.01 3.250.45 0.230.18 69.610.99 29.960.84 6.890.38 0.730.22
Layout 93.220.69 60.151.58 19.490.88 2.270.44 96.050.34 67.830.90 21.931.34 2.350.41
Structured 90.401.06 48.641.32 10.710.92 0.680.25 89.250.72 53.051.20 15.760.86 1.740.49
Attn-Exct 93.640.76 65.101.24 28.010.90 6.010.61 91.740.49 62.510.94 26.120.78 5.890.40
Ours 98.080.40 76.161.04 28.810.95 3.280.48 97.750.34 76.931.09 33.921.47 6.210.62

💻 Environment Setup

For those who want to use our codebase to train your own diffusion models with grounding objectives, follow the below instructions:

conda create -n TokenCompose python=3.8.5
conda activate TokenCompose
conda install pytorch==1.13.1 torchvision==0.14.1 torchaudio==0.13.1 pytorch-cuda=11.7 -c pytorch -c nvidia
pip install -r requirements.txt

We have verified the environment setup using this specific package versions, but we expect that it will also work for newer versions too!

🛠️ Dataset Setup

If you want to use your own data, please refer to preprocess_data for details.

If you want to use our training data as examples or for research purposes, please follow the below instructions:

1. Setup the COCO Image Data

cd train/data
# download COCO train2017
wget http://images.cocodataset.org/zips/train2017.zip
unzip train2017.zip
rm train2017.zip
bash coco_data_setup.sh

After this step, you should have the following structure under the train/data directory:

train/data/
    coco_gsam_img/
        train/
            000000000142.jpg
            000000000370.jpg
            ...

2. Setup Token-wise Grounded Segmentation Maps

Download COCO segmentation data from Google Drive and put it under train/data directory.

After this step, you should have the following structure under the train/data directory:

train/data/
    coco_gsam_img/
        train/
            000000000142.jpg
            000000000370.jpg
            ...
    coco_gsam_seg.tar

Then, run the following command to unzip the segmentation data:

cd train/data
tar -xvf coco_gsam_seg.tar
rm coco_gsam_seg.tar

After the setup, you should have the following structure under the train/data directory:

train/data/
    coco_gsam_img/
        train/
            000000000142.jpg
            000000000370.jpg
            ...
    coco_gsam_seg/
        000000000142/
            mask_000000000142_bananas.png
            mask_000000000142_bread.png
            ...
        000000000370/
            mask_000000000370_bananas.png
            mask_000000000370_bread.png
            ...
        ...

📈 Training

We use wandb to log some curves and visualizations. Login to wandb before running the scripts.

wandb login

Then, to run TokenCompose, use the following command:

cd train
bash scripts/train.sh

The results will be saved under train/results directory.

🏷️ License

This repository is released under the Attribution-NonCommercial 4.0 International license.

🙏 Acknowledgement

Our code is built upon diffusers, prompt-to-prompt, VISOR, Grounded-Segment-Anything, and CLIP. We thank all these authors for their nicely open sourced code and their great contributions to the community.

📝 Citation

If you find our work useful, please consider citing:

@misc{wang2023tokencompose,
      title={TokenCompose: Grounding Diffusion with Token-level Supervision}, 
      author={Zirui Wang and Zhizhou Sha and Zheng Ding and Yilin Wang and Zhuowen Tu},
      year={2023},
      eprint={2312.03626},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
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