Zero-Shot Voice Conversion via Content-Aware Timbre Ensemble and Conditional Flow Matching
Abstract
Despite recent advances in zero-shot voice conversion (VC), achieving speaker similarity and naturalness comparable to ground-truth recordings remains a significant challenge. In this letter, we propose CTEFM-VC, a zero-shot VC framework that integrates content-aware timbre ensemble modeling with conditional flow matching. Specifically, CTEFM-VC decouples utterances into content and timbre representations and leverages a conditional flow matching model to reconstruct the Mel-spectrogram of the source speech. To enhance its timbre modeling capability and naturalness of generated speech, we first introduce a context-aware timbre ensemble modeling approach that adaptively integrates diverse speaker verification embeddings and enables the effective utilization of source content and target timbre elements through a cross-attention module. Furthermore, a structural similarity-based timbre loss is presented to jointly train CTEFM-VC end-to-end. Experiments show that CTEFM-VC consistently achieves the best performance in all metrics assessing speaker similarity, speech naturalness, and intelligibility, significantly outperforming state-of-the-art zero-shot VC systems.
Keywords
Cite
@article{arxiv.2411.02026,
title = {Zero-Shot Voice Conversion via Content-Aware Timbre Ensemble and Conditional Flow Matching},
author = {Yu Pan and Yuguang Yang and Jixun Yao and Lei Ma and Jianjun Zhao},
journal= {arXiv preprint arXiv:2411.02026},
year = {2025}
}
Comments
Work in progress; 5 pages;