--- title: Deepfake Detect emoji: 📈 colorFrom: indigo colorTo: pink sdk: gradio app_file: app.py pinned: false license: gpl-3.0 --- Check out the configuration reference at https://huggingface.co/docs/hub/spaces#reference # GAN-image-detection This repository contains a GAN-generated image detector developed to distinguish real images from synthetic ones. The detector is based on an ensemble of CNNs. The backbone of each CNN is the EfficientNet-B4. Each model of the ensemble has been trained in a different way following the suggestions presented in [this paper](https://ieeexplore.ieee.org/abstract/document/9360903) in order to increase the detector robustness to compression and resizing. ## Run the detector ### Prerequisites 1. Create and activate the conda environment ```bash conda env create -f environment.yml conda activate gan-image-detection ``` 2. Download the model's weights from [this link](https://www.dropbox.com/s/g1z2u8wl6srjh6v/weigths.zip) and unzip the file under the main folder ```bash wget https://www.dropbox.com/s/g1z2u8wl6srjh6v/weigths.zip unzip weigths.zip ``` ### Test the detector on a single image We provide a simple script to obtain the model score for a single image. ```bash python gan_vs_real_detector.py --img_path $PATH_TO_TEST_IMAGE ``` ## Performance We provide a [notebook](https://github.com/polimi-ispl/GAN-image-detection/blob/main/roc_curves.ipynb) with the script for computing the ROC curve for each dataset. ## How to cite Training procedures have been carried out following the suggestions presented in the following paper. Plaintext: ``` S. Mandelli, N. Bonettini, P. Bestagini, S. Tubaro, "Training CNNs in Presence of JPEG Compression: Multimedia Forensics vs Computer Vision", IEEE International Workshop on Information Forensics and Security (WIFS), 2020, doi: 10.1109/WIFS49906.2020.9360903. ``` Bibtex: ```bibtex @INPROCEEDINGS{mandelli2020training, author={Mandelli, Sara and Bonettini, Nicolò and Bestagini, Paolo and Tubaro, Stefano}, booktitle={IEEE International Workshop on Information Forensics and Security (WIFS)}, title={Training {CNNs} in Presence of {JPEG} Compression: Multimedia Forensics vs Computer Vision}, year={2020}, doi={10.1109/WIFS49906.2020.9360903}} ``` ## Credits [Image and Sound Processing Lab - Politecnico di Milano](http://ispl.deib.polimi.it/) - Sara Mandelli - Nicolò Bonettini - Paolo Bestagini - Stefano Tubaro