--- license: mit pipeline_tag: image-classification --- # Scaling Up AI-Generated Image Detection with Generator-Aware Prototypes This repository contains the model presented in the paper [Scaling Up AI-Generated Image Detection via Generator-Aware Prototypes](https://huggingface.co/papers/2512.12982). GAPL proposes a novel framework to scale up AI-generated image (AIGI) detection by addressing data heterogeneity and model bottlenecks. It learns canonical forgery prototypes and employs a two-stage training scheme with Low-Rank Adaptation to achieve state-of-the-art performance across various GAN and diffusion-based generators. For more details, including installation and training, please refer to the [official GitHub repository](https://github.com/UltraCapture/GAPL). ## Motivation 
Figure 1: Overview of our proposed Generator-Aware Prototype Learning (GAPL) framework.
## Quick Inference To run inference on a single image to detect whether it is **Real** or **Fake**, use the following Python code: ```python python inference.py \ --model_path pretrained/checkpoint.pt \ --image_path assets/test_image.jpg \ --device cuda ``` **Output Example:** ```text [INFO] Loading model from pretrained/checkpoint.pt... [RESULT] Image: assets/test_image.jpg -> Prediction: Fake (AI-Generated) -> Confidence: 99.8% ``` ## Citation If you find our work useful in your research, please consider citing: ```bibtex @article{qin2025Scaling, title={Scaling Up AI-Generated Image Detection with Generator-Aware Prototypes}, author={Qin, Ziheng and Ji, Yuheng and Tao, Renshuai and Tian, Yuxuan and Liu, Yuyang and Wang, Yipu and Zheng, Xiaolong}, journal={arXiv preprint arXiv:2512.12982}, year={2025} } ``` ## Acknowledgements Our code is developed based on the following excellent open-source repositories. We appreciate their excellent work and contributions to the community: - **[CNNDetection](https://github.com/peterwang512/CNNDetection)** - **[Community Forensics](https://github.com/JeongsooP/Community-Forensics)** We leverage the dataset and borrow some code from this codebase.