Published 2024 | Version v1
Conference paper Open

Towards generalisable and calibrated audio deepfake detection with self-supervised representations

  • 1. POLITEHNICA Bucharest
  • 2. ROR icon Technical University of Cluj-Napoca
  • 3. POLITEHNICA Bucuresti
  • 4. Bitdefender

Description

Generalisation—the ability of a model to perform well on unseen data—is crucial for building reliable deepfake detectors. However, recent studies have shown that the current audio deepfake models fall short of this desideratum. In this work we investigate the potential of pretrained self-supervised representations in building general and calibrated audio deepfake detection models. We show that large frozen representations coupled with a simple logistic regression classifier are extremely effective in achieving strong generalisation capabilities: compared to the RawNet2 model, this approach reduces the equal error rate from 30.9% to 8.8% on a benchmark of eight deepfake datasets, while learning less than 2k parameters. Moreover, the proposed method produces considerably more reliable predictions compared to previous approaches making it more suitable for realistic use.

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Additional details

Funding

European Commission
AI4TRUST – AI-based-technologies for trustworthy solutions against disinformation 101070190
European Commission
ELIAS – European Lighthouse of AI for Sustainability 101120237