--- license: apache-2.0 language: - en - de - fr - es - uk - pl - ru - it task_categories: - audio-classification tags: - audio - deepfake - audio-deepfake-detection - anti-spoofing - voice - voice-antispoofing - MLAAD pretty_name: 'MLAAD: The Multi-Language Audio Anti-Spoofing Dataset' size_categories: - 100K

### Introduction Welcome to MLAAD: The Multi-Language Audio Anti-Spoofing Dataset -- a dataset to train, test and evaluate audio deepfake detection. See [the paper](https://arxiv.org/pdf/2401.09512.pdf) for more information. ### Download the dataset ``` # if needed, install git-lfs sudo apt-get install git-lfs git lfs install # clone the repository git clone https://huggingface.co/datasets/mueller91/MLAAD ``` ### Structure The dataset is based on the [M-AILABS](https://github.com/imdatceleste/m-ailabs-dataset) dataset. MLAAD is structured as follows: ``` fake |-language_1 |-language_2 |- .... |- language_K | - model_1_K | - model_2_K | - .... | - model_L_K | - meta.csv | - audio_L_K_1.wav | - audio_L_K_2.wav | - audio_L_K_3.wav | - .... | - audio_L_K_1000.wav ``` The file 'meta.csv' contains the following identifiers. For more in these, please see the [paper](https://arxiv.org/pdf/2401.09512) and [our website](https://deepfake-total.com/mlaad). ``` path|original_file|language|is_original_language|duration|training_data|model_name|architecture|transcript ``` ### Proposed Usage We suggest to use MLAAD either as new out-of-domain test data for existing anti-spoofing models, or as additional training resource. We urge to complement the fake audios in MLAAD with the corresponding authentic ones from M-AILABS, in order to obtain a balanced dataset. M-AILABS can be downloaded [here](https://github.com/imdatceleste/m-ailabs-dataset). An antispoofing model trained on (among others) the MLAAD dataset is available [here](https://deepfake-total.com/). ### Bibtex ``` @article{muller2024mlaad, title={MLAAD: The Multi-Language Audio Anti-Spoofing Dataset}, author={M{\"u}ller, Nicolas M and Kawa, Piotr and Choong, Wei Herng and Casanova, Edresson and G{\"o}lge, Eren and M{\"u}ller, Thorsten and Syga, Piotr and Sperl, Philip and B{\"o}ttinger, Konstantin}, journal={arXiv preprint arXiv:2401.09512}, year={2024} } ```