Research
研究プロジェクト・論文・書籍等
- 論文
Post-training for Deepfake Speech Detection
- #音声処理
- #ディープフェイク検知
IEEE ASRU 2025
We introduce a post-training approach that adapts self-supervised learning (SSL) models for deepfake speech detection by bridging the gap between general pre-training and domain-specific fine-tuning. We present AntiDeepfake models, a series of post-trained models developed using a large-scale multilingual speech dataset containing over 56,000 hours of genuine speech and 18,000 hours of speech with various artifacts in over one hundred languages. Experimental results show that the post-trained models already exhibit strong robustness and generalization to unseen deepfake speech. When they are further fine-tuned on the Deepfake-Eval-2024 dataset, these models consistently surpass existing state-of-the-art detectors that do not leverage post-training. Model checkpoints and source code are available online.
Hugging Face: https://huggingface.co/nii-yamagishilab
GitHub: https://github.com/nii-yamagishilab/AntiDeepfake