AMEERAZAM08 / ImagenHub

A one-stop library to standardize the inference and evaluation of all the conditional image generation models. (ICLR 2024)

Home Page:https://tiger-ai-lab.github.io/ImagenHub/

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πŸ–ΌοΈ ImagenHub

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ImagenHub: Standardizing the evaluation of conditional image generation models
ICLR 2024

ImagenHub is a one-stop library to standardize the inference and evaluation of all the conditional image generation models.

  • We define 7 prominent tasks and curate 7 high-quality evaluation datasets for each task.
  • We built a unified inference pipeline to ensure fair comparison. We currently support around 30 models.
  • We designed two human evaluation scores, i.e. Semantic Consistency and Perceptual Quality, along with comprehensive guidelines to evaluate generated images.
  • We provide code for visualization, autometrics and Amazon mechanical turk templates.

πŸ“° News

πŸ“„ Table of Contents

πŸ› οΈ Installation πŸ”

git clone https://github.com/TIGER-AI-Lab/ImagenHub.git
cd ImagenHub
conda env create -f env_cfg/imagen_environment.yml
conda activate imagen
pip install -e .

For models like Dall-E, DreamEdit, and BLIPDiffusion, please see Extra Setup

πŸ‘¨β€πŸ« Get Started πŸ”

Benchmarking

To reproduce our experiment reported in the paper:

Example for text-guided image generation:

python3 benchmarking.py -cfg benchmark_cfg/ih_t2i.yml

Note that the expected output structure would be:

result_root_folder
└── experiment_basename_folder
    β”œβ”€β”€ input (If applicable)
    β”‚   └── image_1.jpg ...
    β”œβ”€β”€ model1
    β”‚   └── image_1.jpg ...
    β”œβ”€β”€ model2
    β”‚   └── image_1.jpg ...
    β”œβ”€β”€ ...

Then after running the experiment, you can run

python3 visualize.py --cfg benchmark_cfg/ih_t2i.yml

to produce a index.html file for visualization.

The file would look like something like this. We hosted our experiment results on Imagen Museum.

Infering one model

import imagen_hub

model = imagen_hub.load("SDXL")
image = model.infer_one_image(prompt="people reading pictures in a museum, watercolor", seed=1)
image

Running Metrics

from imagen_hub.metrics import MetricLPIPS
from imagen_hub.utils import load_image, save_pil_image, get_concat_pil_images

def evaluate_one(model, real_image, generated_image):
  score = model.evaluate(real_image, generated_image)
  print("====> Score : ", score)

image_I = load_image("https://chromaica.github.io/Museum/ImagenHub_Text-Guided_IE/input/sample_102724_1.jpg")
image_O = load_image("https://chromaica.github.io/Museum/ImagenHub_Text-Guided_IE/DiffEdit/sample_102724_1.jpg")
show_image = get_concat_pil_images([image_I, image_O], 'h')

model = MetricLPIPS()
evaluate_one(model, image_I, image_O) # ====> Score :  0.11225218325853348

show_image

πŸ“˜ Documentation πŸ”

The tutorials and API documentation are hosted on imagenhub.readthedocs.io.

🧠 Philosophy πŸ”

By streamlining research and collaboration, ImageHub plays a pivotal role in propelling the field of Image Generation and Editing.

  • Purity of Evaluation: We ensure a fair and consistent evaluation for all models, eliminating biases.
  • Research Roadmap: By defining tasks and curating datasets, we provide clear direction for researchers.
  • Open Collaboration: Our platform fosters the exchange and cooperation of related technologies, bringing together minds and innovations.

Implemented Models

We included more than 30 Models in image synthesis. See the full list here:

Method Venue Type
Stable Diffusion - Text-To-Image Generation
Stable Diffusion XL arXiv'23 Text-To-Image Generation
DeepFloyd-IF - Text-To-Image Generation
OpenJourney - Text-To-Image Generation
Dall-E - Text-To-Image Generation
Kandinsky - Text-To-Image Generation
MagicBrush arXiv'23 Text-guided Image Editing
InstructPix2Pix CVPR'23 Text-guided Image Editing
DiffEdit ICLR'23 Text-guided Image Editing
Imagic CVPR'23 Text-guided Image Editing
CycleDiffusion ICCV'23 Text-guided Image Editing
SDEdit ICLR'22 Text-guided Image Editing
Prompt-to-Prompt ICLR'23 Text-guided Image Editing
Text2Live ECCV'22 Text-guided Image Editing
Pix2PixZero SIGGRAPH'23 Text-guided Image Editing
GLIDE ICML'22 Mask-guided Image Editing
Blended Diffusion CVPR'22 Mask-guided Image Editing
Stable Diffusion Inpainting - Mask-guided Image Editing
Stable Diffusion XL Inpainting - Mask-guided Image Editing
TextualInversion ICLR'23 Subject-driven Image Generation
BLIP-Diffusion arXiv'23 Subject-Driven Image Generation
DreamBooth(+ LoRA) CVPR'23 Subject-Driven Image Generation
Photoswap arXiv'23 Subject-Driven Image Editing
DreamEdit arXiv'23 Subject-Driven Image Editing
Custom Diffusion CVPR'23 Multi-Subject-Driven Generation
ControlNet arXiv'23 Control-guided Image Generation
UniControl arXiv'23 Control-guided Image Generation

Comprehensive Functionality

  • Common Metrics for GenAI
  • Visualization tool
  • Amazon Mechanical Turk Templates (Coming Soon)

High quality software engineering standard.

  • Documentation
  • Type Hints
  • Code Coverage (Coming Soon)

πŸ™Œ Contributing πŸ”

For the Community

Community contributions are encouraged!

ImagenHub is still under development. More models and features are going to be added and we always welcome contributions to help make ImagenHub better. If you would like to contribute, please check out CONTRIBUTING.md.

We believe that everyone can contribute and make a difference. Whether it's writing code πŸ’», fixing bugs πŸ›, or simply sharing feedback πŸ’¬, your contributions are definitely welcome and appreciated πŸ™Œ

And if you like the project, but just don't have time to contribute, that's fine. There are other easy ways to support the project and show your appreciation, which we would also be very happy about:

  • Star the project
  • Tweet about it
  • Refer this project in your project's readme
  • Mention the project at local meetups and tell your friends/colleagues

For the Researchers:

πŸ–ŠοΈ Citation πŸ”

Please kindly cite our paper if you use our code, data, models or results:

@inproceedings{
ku2024imagenhub,
title={ImagenHub: Standardizing the evaluation of conditional image generation models},
author={Max Ku and Tianle Li and Kai Zhang and Yujie Lu and Xingyu Fu and Wenwen Zhuang and Wenhu Chen},
booktitle={The Twelfth International Conference on Learning Representations},
year={2024},
url={https://openreview.net/forum?id=OuV9ZrkQlc}
}
@article{ku2023imagenhub,
  title={ImagenHub: Standardizing the evaluation of conditional image generation models},
  author={Max Ku and Tianle Li and Kai Zhang and Yujie Lu and Xingyu Fu and Wenwen Zhuang and Wenhu Chen},
  journal={arXiv preprint arXiv:2310.01596},
  year={2023}
}

🀝 Acknowledgement πŸ”

Please refer to ACKNOWLEDGEMENTS.md

🎫 License πŸ”

This project is released under the License.

⭐ Star History πŸ”

Star History Chart

About

A one-stop library to standardize the inference and evaluation of all the conditional image generation models. (ICLR 2024)

https://tiger-ai-lab.github.io/ImagenHub/

License:MIT License


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