Hemlata Tak, Massimiliano Todisco, Xin Wang, Jee-weon Jung, Junichi Yamagishi, Nicholas Evans
The performance of spoofing countermeasure systems depends fundamentally upon the use of sufficiently representative training data. With this usually being limited, current solutions typically lack generalisation to attacks encountered in the wild. Strategies to improve reliability in the face of uncontrolled, unpredictable attacks are hence needed. We report in this paper our efforts to use self-supervised learning in the form of a wav2vec 2.0 front-end with fine tuning. Despite initial base representations being learned using only bona fide data and no spoofed data, we obtain the lowest equal error rates reported in the literature for both the ASVspoof 2021 Logical Access and Deepfake databases. When combined with data augmentation,these results correspond to an improvement of almost 90% relative to our baseline system.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| 3D Reconstruction | ASVspoof 2021 | 21DF EER | 3.69 | XLSR+AASIST |
| 3D Reconstruction | ASVspoof 2021 | 21LA EER | 1 | XLSR+AASIST |
| Speaker Verification | ASVspoof 2021 | 21DF EER | 3.69 | XLSR+AASIST |
| Speaker Verification | ASVspoof 2021 | 21LA EER | 1 | XLSR+AASIST |
| 3D | ASVspoof 2021 | 21DF EER | 3.69 | XLSR+AASIST |
| 3D | ASVspoof 2021 | 21LA EER | 1 | XLSR+AASIST |
| DeepFake Detection | ASVspoof 2021 | 21DF EER | 3.69 | XLSR+AASIST |
| DeepFake Detection | ASVspoof 2021 | 21LA EER | 1 | XLSR+AASIST |
| 3D Shape Reconstruction from Videos | ASVspoof 2021 | 21DF EER | 3.69 | XLSR+AASIST |
| 3D Shape Reconstruction from Videos | ASVspoof 2021 | 21LA EER | 1 | XLSR+AASIST |