--- license: cc --- # Localized Audio Visual DeepFake Dataset (LAV-DF) This repo is the official PyTorch implementation for the DICTA paper [Do You Really Mean That? Content Driven Audio-Visual Deepfake Dataset and Multimodal Method for Temporal Forgery Localization](https://ieeexplore.ieee.org/document/10034605) (Best Award), and the journal paper [_Glitch in the Matrix_: A Large Scale Benchmark for Content Driven Audio-Visual Forgery Detection and Localization](https://www.sciencedirect.com/science/article/pii/S1077314223001984) accepted by CVIU. ## LAV-DF Dataset ### Download To use this LAV-DF dataset, you should agree the [terms and conditions](https://github.com/ControlNet/LAV-DF/blob/master/TERMS_AND_CONDITIONS.md). Download link: [OneDrive](https://monashuni-my.sharepoint.com/:f:/g/personal/zhixi_cai_monash_edu/EklD-8lD_GRNl0yyJJ-cF3kBWEiHRmH4U5Dtg7eJjAOUlg?e=wowDpd), [Google Drive](https://drive.google.com/drive/folders/1U8asIMb0bpH6-zMR_5FaJmPnC53lomq7?usp=sharing), [HuggingFace](https://huggingface.co/datasets/ControlNet/LAV-DF). ### Baseline Benchmark | Method | AP@0.5 | AP@0.75 | AP@0.95 | AR@100 | AR@50 | AR@20 | AR@10 | |---------|--------|---------|---------|--------|-------|-------|-------| | BA-TFD | 79.15 | 38.57 | 00.24 | 67.03 | 64.18 | 60.89 | 58.51 | | BA-TFD+ | 96.30 | 84.96 | 04.44 | 81.62 | 80.48 | 79.40 | 78.75 | Please note this result of BA-TFD is slightly better than the one reported in the paper. This is because we have used the better hyperparameters in this repository. ## Baseline Models ### Requirements The main versions are, - Python >= 3.7, < 3.11 - PyTorch >= 1.13 - torchvision >= 0.14 - pytorch_lightning == 1.7.* Run the following command to install the required packages. ```bash pip install -r requirements.txt ``` ### Training BA-TFD Train the BA-TFD introduced in paper [Do You Really Mean That? Content Driven Audio-Visual Deepfake Dataset and Multimodal Method for Temporal Forgery Localization](https://ieeexplore.ieee.org/document/10034605) with default hyperparameter on LAV-DF dataset. ```bash python train.py \ --config ./config/batfd_default.toml \ --data_root \ --batch_size 4 --num_workers 8 --gpus 1 --precision 16 ``` The checkpoint will be saved in `ckpt` directory, and the tensorboard log will be saved in `lighntning_logs` directory. ### Training BA-TFD+ Train the BA-TFD+ introduced in paper [_Glitch in the Matrix_: A Large Scale Benchmark for Content Driven Audio-Visual Forgery Detection and Localization](https://www.sciencedirect.com/science/article/pii/S1077314223001984) with default hyperparameter on LAV-DF dataset. ```bash python train.py \ --config ./config/batfd_plus_default.toml \ --data_root \ --batch_size 4 --num_workers 8 --gpus 2 --precision 32 ``` Please use `FP32` for training BA-TFD+ as `FP16` will cause inf and nan. The checkpoint will be saved in `ckpt` directory, and the tensorboard log will be saved in `lighntning_logs` directory. ### Evaluation Please run the following command to evaluate the model with the checkpoint saved in `ckpt` directory. Besides, you can also download the [BA-TFD](https://github.com/ControlNet/LAV-DF/releases/download/pretrained_model/batfd_default.ckpt) and [BA-TFD+](https://github.com/ControlNet/LAV-DF/releases/download/pretrained_model_v2/batfd_plus_default.ckpt) pretrained models. ```bash python evaluate.py \ --config \ --data_root \ --checkpoint \ --batch_size 1 --num_workers 4 ``` In the script, there will be a temporal inference results generated in `output` directory, and the AP and AR scores will be printed in the console. Note please make sure only one GPU is visible to the evaluation script. ## License This project is under the CC BY-NC 4.0 license. See [LICENSE](LICENSE) for details. ## References If you find this work useful in your research, please cite them. The conference paper, ```bibtex @inproceedings{cai2022you, title = {Do You Really Mean That? Content Driven Audio-Visual Deepfake Dataset and Multimodal Method for Temporal Forgery Localization}, author = {Cai, Zhixi and Stefanov, Kalin and Dhall, Abhinav and Hayat, Munawar}, booktitle = {2022 International Conference on Digital Image Computing: Techniques and Applications (DICTA)}, year = {2022}, doi = {10.1109/DICTA56598.2022.10034605}, pages = {1--10}, address = {Sydney, Australia}, } ``` The extended journal version is accepted by CVIU, ```bibtex @article{cai2023glitch, title = {Glitch in the Matrix: A Large Scale Benchmark for Content Driven Audio-Visual Forgery Detection and Localization}, author = {Cai, Zhixi and Ghosh, Shreya and Dhall, Abhinav and Gedeon, Tom and Stefanov, Kalin and Hayat, Munawar}, journal = {Computer Vision and Image Understanding}, year = {2023}, volume = {236}, pages = {103818}, issn = {1077-3142}, doi = {10.1016/j.cviu.2023.103818}, } ``` ## Acknowledgements Some code related to boundary matching mechanism is borrowed from [JJBOY/BMN-Boundary-Matching-Network](https://github.com/JJBOY/BMN-Boundary-Matching-Network) and [xxcheng0708/BSNPlusPlus-boundary-sensitive-network](https://github.com/xxcheng0708/BSNPlusPlus-boundary-sensitive-network).