Datasets:

Modalities:
Image
ArXiv:
License:
FakeImageDataset / README.md
whlzy's picture
Update README.md
55d87bb
|
raw
history blame
6.39 kB
metadata
license: apache-2.0

Fake Image Dataset

Fake Image Dataset is now open-sourced at huggingface (InfImagine Organization) and openxlab. ↗ It consists of two folders, ImageData and MetaData. ImageData contains the compressed packages of the Fake Image Dataset, while MetaData contains the labeling information of the corresponding data indicating whether they are real or fake.

Sentry-Image is now open-sourced at Sentry-Image (github repository) which provides the SOTA fake image detection models in Sentry-Image Leaderboard pretraining in Fake Image Dataset to detect whether the image provided is an AI-generated or real image.

Why we need Fake Image Dataset and Sentry-Image?

  • 🧐 Recent study have shown that humans struggle significantly to distinguish real photos from AI-generated ones, with a misclassification rate of 38.7%.

  • 🤗 To help people confirm whether the images they see are real images or AI-generated images, we launched the Sentry-Image project.

  • 💻 Sentry-Image is an open source project which provides the SOTA fake image detection models in Sentry-Image Leaderboard to detect whether the image provided is an AI-generated or real image.

Dataset card for Fake Image Dataset

Dataset Description

How to Download

You can use following codes to download the dataset:

git lfs install
git clone https://huggingface.co/datasets/InfImagine/FakeImageDataset

You can use following codes to extract the files in each subfolder (take the IF-CC95K subfolder in ImageData/val/IF-CC95K as an example):

cat IF-CC95K.tar.gz.* > IF-CC95K.tar.gz
tar -xvf IF-CC95K.tar.gz

Dataset Summary

FakeImageDataset was created to serve as an large-scale dataset for the pretraining of detecting fake images.

It was built on StableDiffusion v1.5, IF and StyleGAN3.

Supported Tasks and Leaderboards

FakeImageDataset is intended to be primarly used as a pretraining dataset for detecting fake images.

Sub Dataset

Training Dataset (Fake2M)

Dataset SD-V1.5Real-dpms-25 IF-V1.0-dpms++-25 StyleGAN3
Generator Diffusion Diffusion GAN
Numbers 1M 1M 87K
Resolution 512 256 (>=512)
Caption CC3M-Train CC3M-Train -
ImageData Path ImageData/train/SDv15R-CC1M ImageData/train/IFv1-CC1M ImageData/train/stylegan3-80K
MetaData Path MetaData/train/SDv15R-CC1M.csv MetaData/train/IF-CC1M.csv MetaData/train/stylegan3-80K.csv

Validation Dataset (MPBench)

Dataset SDv15 SDv21 IF Cogview2 StyleGAN3 Midjourneyv5
Generator Diffusion Diffusion Diffusion AR GAN -
Numbers 30K 15K 95K 22K 60K 5K
Resolution 512 512 256 480 (>=512) (>=512)
Caption CC15K-val CC15K-val CC15K-val CC15K-val - -
ImageData Path ImageData/val/SDv15-CC30K ImageData/val/SDv21-CC15K ImageData/val/IF-CC95K ImageData/val/cogview2-22K ImageData/val/stylegan3-60K ImageData/val/Midjourneyv5-5K
MetaData Path MetaData/val/SDv15-CC30K.csv MetaData/val/SDv21-CC15K.csv MetaData/val/IF-CC95K.csv MetaData/val/cogview2-22K.csv MetaData/val/stylegan3-60K.csv MetaData/val/Midjourneyv5-5K.csv

News

License

This project is open-sourced under the Apache-2.0. These weights and datasets are fully open for academic research and can be used for commercial purposes with official written permission. If you find our open-source models and datasets useful for your business, we welcome your donation to support the development of the next-generation Sentry-Image model. Please contact [email protected] for commercial licensing and donation inquiries.

Citation

The code and model in this repository is mostly developed for or derived from the paper below. Please cite it if you find the repository helpful.

@misc{sentry-image-leaderboard,
      title = {Sentry-Image Leaderboard},
      author = {Zeyu Lu, Di Huang, Chunli Zhang, Chengyue Wu, Xihui Liu, Lei Bai, Wanli Ouyang},
      year = {2023},
      publisher = {InfImagine, Shanghai AI Laboratory},
      howpublished = "\url{https://github.com/Inf-imagine/Sentry}"
},
@misc{lu2023seeing,
      title = {Seeing is not always believing: Benchmarking Human and Model Perception of AI-Generated Images}, 
      author = {Zeyu Lu, Di Huang, Lei Bai, Jingjing Qu, Chengyue Wu, Xihui Liu, Wanli Ouyang},
      year = {2023},
      eprint = {2304.13023},
      archivePrefix = {arXiv},
      primaryClass = {cs.AI}
}