This repository provides the overall framework for training and evaluating audio anti-spoofing systems proposed in 'AASIST: Audio Anti-Spoofing using Integrated Spectro-Temporal Graph Attention Networks'
requirements.txt
must be installed for execution. We state our experiment environment for those who prefer to simulate as similar as possible.
- Installing dependencies
pip install -r requirements.txt
- Our environment (for GPU training)
- Based on a docker image:
pytorch:1.6.0-cuda10.1-cudnn7-runtime
- GPU: 1 NVIDIA Tesla V100
- About 16GB is required to train AASIST using a batch size of 24
- gpu-driver: 418.67
- Based on a docker image:
We train/validate/evaluate AASIST using the ASVspoof 2019 logical access dataset [4].
python ./download_dataset.py
(Alternative) Manual preparation is available via
- ASVspoof2019 dataset: https://datashare.ed.ac.uk/handle/10283/3336
- Download
LA.zip
and unzip it - Set your dataset directory in the configuration file
- Download
The main.py
includes train/validation/evaluation.
To train AASIST [1]:
python main.py --config ./config/AASIST.conf
To train AASIST-L [1]:
python main.py --config ./config/AASIST-L.conf
We additionally enabled the training of RawNet2[2] and RawGAT-ST[3].
To Train RawNet2 [2]:
python main.py --config ./config/RawNet2_baseline.conf
To train RawGAT-ST [3]:
python main.py --config ./config/RawGATST_baseline.conf
We provide pre-trained AASIST and AASIST-L.
To evaluate AASIST [1]:
- It shows
EER: 0.83%
,min t-DCF: 0.0275
python main.py --eval --config ./config/AASIST.conf
To evaluate AASIST-L [1]:
- It shows
EER: 0.99%
,min t-DCF: 0.0309
- Model has
85,306
parameters
python main.py --eval --config ./config/AASIST-L.conf
Simply by adding a configuration file and a model architecture, one can train and evaluate their models.
To train a custom model:
1. Define your model
- The model should be a class named "Model"
2. Make a configuration by modifying "model_config"
- architecture: filename of your model.
- hyper-parameters to be tuned can be also passed using variables in "model_config"
3. run python main.py --config {CUSTOM_CONFIG_NAME}
Copyright (c) 2021-present NAVER Corp.
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THE SOFTWARE.
This repository is built on top of several open source projects.
The repository for baseline RawGAT-ST model will be open
The dataset we use is ASVspoof 2019 [4]
[1] AASIST: Audio Anti-Spoofing using Integrated Spectro-Temporal Graph Attention Networks
@INPROCEEDINGS{Jung2021AASIST,
author={Jung, Jee-weon and Heo, Hee-Soo and Tak, Hemlata and Shim, Hye-jin and Chung, Joon Son and Lee, Bong-Jin and Yu, Ha-Jin and Evans, Nicholas},
booktitle={arXiv preprint arXiv:2110.01200},
title={AASIST: Audio Anti-Spoofing using Integrated Spectro-Temporal Graph Attention Networks},
year={2021}
[2] End-to-End anti-spoofing with RawNet2
@INPROCEEDINGS{Tak2021End,
author={Tak, Hemlata and Patino, Jose and Todisco, Massimiliano and Nautsch, Andreas and Evans, Nicholas and Larcher, Anthony},
booktitle={Proc. ICASSP},
title={End-to-End anti-spoofing with RawNet2},
year={2021},
pages={6369-6373}
}
[3] End-to-end spectro-temporal graph attention networks for speaker verification anti-spoofing and speech deepfake detection
@inproceedings{tak21_asvspoof,
author={Tak, Hemlata and Jung, Jee-weon and Patino, Jose and Kamble, Madhu and Todisco, Massimiliano and Evans, Nicholas},
booktitle={Proc. ASVSpoof Challenge},
title={End-to-end spectro-temporal graph attention networks for speaker verification anti-spoofing and speech deepfake detection},
year={2021},
pages={1--8}
[4] ASVspoof 2019: A large-scale public database of synthesized, converted and replayed speech
@article{wang2020asvspoof,
title={ASVspoof 2019: A large-scale public database of synthesized, converted and replayed speech},
author={Wang, Xin and Yamagishi, Junichi and Todisco, Massimiliano and Delgado, H{\'e}ctor and Nautsch, Andreas and Evans, Nicholas and Sahidullah, Md and Vestman, Ville and Kinnunen, Tomi and Lee, Kong Aik and others},
journal={Computer Speech \& Language},
volume={64},
pages={101114},
year={2020},
publisher={Elsevier}
}