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DIRE for Diffusion-Generated Image Detection (ICCV 2023)

Zhendong Wang, Jianmin Bao, Wengang Zhou, Weilun Wang, Hezhen Hu, Hong Chen, Houqiang Li

[paper] [DiffusionForensics dataset] [pre-trained model]

News

  • [2023/08/27] 🔥 Release code, dataset and pre-trained models. [OneDrive]/[RecDrive (code: dire)]

  • [2023/07/14] 🎉 DIRE is accepted by ICCV 2023.

  • [2023/03/16] ✨ Release paper.

Abstract

Diffusion models have shown remarkable success in visual synthesis, but have also raised concerns about potential abuse for malicious purposes. In this paper, we seek to build a detector for telling apart real images from diffusion-generated images. We find that existing detectors struggle to detect images generated by diffusion models, even if we include generated images from a specific diffusion model in their training data. To address this issue, we propose a novel image representation called DIffusion Reconstruction Error (DIRE), which measures the error between an input image and its reconstruction counterpart by a pre-trained diffusion model. We observe that diffusion-generated images can be approximately reconstructed by a diffusion model while real images cannot. It provides a hint that DIRE can serve as a bridge to distinguish generated and real images. DIRE provides an effective way to detect images generated by most diffusion models, and it is general for detecting generated images from unseen diffusion models and robust to various perturbations. Furthermore, we establish a comprehensive diffusion-generated benchmark including images generated by eight diffusion models to evaluate the performance of diffusion-generated image detectors. Extensive experiments on our collected benchmark demonstrate that DIRE exhibits superiority over previous generated-image detectors.

DIRE pipeline

Requirements

conda create -n dire python=3.9
conda activate dire
pip install torch==2.0.0+cu117 torchvision==0.15.1+cu117 -f https://download.pytorch.org/whl/torch_stable.html
pip install -r requirements.txt

DiffusionForensics Dataset

The DiffusionForensics dataset can be downloaded from here. The dataset is organized as follows:

images/recons/dire
└── train/val/test
    ├── lsun_bedroom
    │   ├── real
    │   │   └──img1.png...
    │   ├── adm
    │   │   └──img1.png...
    │   ├── ...
    ├── imagenet
    │   ├── real
    │   │   └──img1.png...
    │   ├── adm
    │   │   └──img1.png...
    │   ├── ...
    └── celebahq
        ├── real
        │   └──img1.png...
        ├── adm
        │   └──img1.png...
        ├── ...

Training

Before training, you should link the training real and DIRE images to the data/train folder. For example, you can link the DIRE images of real LSUN-Bedroom to data/train/lsun_adm/0_real and link the DIRE images of ADM-LSUN-Bedroom to data/train/lsun_adm/1_fake. And do the same for validation set and testing set, just modify data/train to data/val and data/test. Then, you can train the DIRE model by running the following command:

sh train.sh

Evaluation

We provide the pre-trained DIRE model in here. You can evaluate the DIRE model by running the following command:

sh test.sh

Inference

We also provide a inference demo demo.py. You can run the following command to inference a single image or a folder of images:

python demo.py -f [image_path/image_dir] -m [model_path]

Acknowledgments

Our code is developed based on guided-diffusion and CNNDetection. Thanks for their sharing codes and models.

Citation

If you find this work useful for your research, please cite our paper:

@article{wang2023dire,
  title={DIRE for Diffusion-Generated Image Detection},
  author={Wang, Zhendong and Bao, Jianmin and Zhou, Wengang and Wang, Weilun and Hu, Hezhen and Chen, Hong and Li, Houqiang},
  journal={arXiv preprint arXiv:2303.09295},
  year={2023}
}