Contrastive Knowledge Distillation for Embedding Refinement in Personalized Speech Enhancement
arXiv:2601.16235v1 Announce Type: new Abstract: Personalized speech enhancement (PSE) has shown convincing results when it comes to extracting a known target voice among interfering ones. The corresponding systems usually incorporate a representation of the target voice within the enhancement system, which is extracted from an enrollment clip of the target voice with upstream models. Those models are generally heavy as the speaker embedding’s quality directly affects PSE performances. Yet, embeddings generated beforehand cannot account for the variations of […]