MixFake is a new benchmark for mixed-authenticity audio and a multi-stream prompt tuning method achieves 0.95% EER foreground and 7.72% absolute gain in complex background deepfake detection.
Speech DF arena: A leaderboard for speech Deepfake detection models,
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Balancing diverse bonafide resources and AI generators in training data is the key to building general deepfake speech detection models.
citing papers explorer
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MixFake: Benchmarking and Enhancing Audio Deepfake Detection in Diverse Real-world Mixed Audio
MixFake is a new benchmark for mixed-authenticity audio and a multi-stream prompt tuning method achieves 0.95% EER foreground and 7.72% absolute gain in complex background deepfake detection.
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A General Model for Deepfake Speech Detection: Diverse Bonafide Resources or Diverse AI-Based Generators
Balancing diverse bonafide resources and AI generators in training data is the key to building general deepfake speech detection models.