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arxiv 2603.08977 v2 pith:QSIN4PCI submitted 2026-03-09 eess.AS cs.SD

Universal Speech Content Factorization

classification eess.AS cs.SD
keywords speechuscfcontentfactorizationuniversalmethodrepresentationspeaker
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose Universal Speech Content Factorization (USCF), a simple and invertible linear method for extracting a low-rank speech representation in which speaker timbre is suppressed while phonetic content is preserved. USCF extends Speech Content Factorization, a closed-set voice conversion (VC) method, to an open-set setting by learning a universal speech-to-content mapping via least-squares optimization and deriving speaker-specific transformations from only a few seconds of target speech. We show through embedding analysis that USCF effectively removes speaker-dependent variation. As a zero-shot VC system, USCF achieves competitive intelligibility, naturalness, and speaker similarity compared to methods that require substantially more target-speaker data or additional neural training. Finally, we demonstrate that as a training-efficient timbre-disentangled speech feature, USCF features can serve as the acoustic representation for training timbre-prompted text-to-speech models. Speech samples and code are publicly available.

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  1. Interpreting Content and Speaker Characteristics in Factorised Self-Supervised Subspaces

    eess.AS 2026-06 unverdicted novelty 4.0

    SVD factorisation of WavLM features reveals content dimensions encoding intensity, formants and voicing while speaker dimensions encode pitch and gender, enabling dimension-level control in speech synthesis.