Dual-LoRA with a language-anchored adversary achieves 0.91% EER on the TidyVoice benchmark for cross-lingual speaker verification by targeting true linguistic cues while preserving speaker discriminability.
Layer-wise analysis of a self-supervised speech representation model
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Dual-LoRA: Parameter-Efficient Adversarial Disentanglement for Cross-Lingual Speaker Verification
Dual-LoRA with a language-anchored adversary achieves 0.91% EER on the TidyVoice benchmark for cross-lingual speaker verification by targeting true linguistic cues while preserving speaker discriminability.