AI RESEARCH

Targeted Speaker Poisoning Framework in Zero-Shot Text-to-Speech

arXiv CS.AI

ArXi:2603.07551v1 Announce Type: cross Zero-shot Text-to-Speech (TTS) voice cloning poses severe privacy risks, demanding the removal of specific speaker identities from trained TTS models. Conventional machine unlearning is insufficient in this context, as zero-shot TTS can dynamically reconstruct voices from just reference prompts. We formalize this task as Speech Generation Speaker Poisoning (SGSP), in which we modify trained models to prevent the generation of specific identities while preserving utility for other speakers.