πŸ”Ž Hybrid Pruning for Anti-Spoofing Results

  • Input Feature: Raw waveform (via SSL model)
  • Frame Configuration: 150 frames per segment, 20 ms frame shift
  • Training Strategy: Jointly optimizing for task performance and model sparsity in a single stage. A warm-up schedule is used where the sparsity target linearly increases from 0 to the final value over the first 5 epochs.
  • Evaluation Metrics: minDCF, EER (%)
  • Evaluation Sets: Dev / Eval
  • Back-end: Multi-Head Factorized Attentive Pooling (MHFA)

Results on ASVspoof 5

The following table compares the performance of our proposed Hybrid Pruning (HP) single system against other top-performing systems from the official ASVspoof 5 Challenge leaderboard.

System Dev minDCF Dev EER (%) Eval minDCF Eval EER (%)
Rank 3 (ID:T27, Fusion) - - 0.0937 3.42
HP (ours, Single system) 0.0395 1.547 0.1028 3.758
Rank 4 (ID:T23, Fusion) - - 0.1124 4.16
Rank 9 (ID:T23, Best single system) - - 0.1499 5.56
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