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Reference-free Adversarial Sex Obfuscation in Speech

4 August 2025
Yangyang Qu
Michele Panariello
Massimiliano Todisco
Nicholas W. D. Evans
ArXiv (abs)PDFHTMLGithub
Main:4 Pages
1 Figures
Bibliography:2 Pages
Abstract

Sex conversion in speech involves privacy risks from data collection and often leaves residual sex-specific cues in outputs, even when target speaker references are unavailable. We introduce RASO for Reference-free Adversarial Sex Obfuscation. Innovations include a sex-conditional adversarial learning framework to disentangle linguistic content from sex-related acoustic markers and explicit regularisation to align fundamental frequency distributions and formant trajectories with sex-neutral characteristics learned from sex-balanced training data. RASO preserves linguistic content and, even when assessed under a semi-informed attack model, it significantly outperforms a competing approach to sex obfuscation.

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