AutoCycle-VC: Towards Bottleneck-Independent Zero-Shot Cross-Lingual Voice Conversion
This paper proposes a simple and robust zero-shot voice conversion system with a cycle structure and mel-spectrogram pre-processing. Previous works suffer from information loss and poor synthesis quality due to their reliance on a carefully designed bottleneck structure. Moreover, models relying sol...
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Zusammenfassung: | This paper proposes a simple and robust zero-shot voice conversion system
with a cycle structure and mel-spectrogram pre-processing. Previous works
suffer from information loss and poor synthesis quality due to their reliance
on a carefully designed bottleneck structure. Moreover, models relying solely
on self-reconstruction loss struggled with reproducing different speakers'
voices. To address these issues, we suggested a cycle-consistency loss that
considers conversion back and forth between target and source speakers.
Additionally, stacked random-shuffled mel-spectrograms and a label smoothing
method are utilized during speaker encoder training to extract a
time-independent global speaker representation from speech, which is the key to
a zero-shot conversion. Our model outperforms existing state-of-the-art results
in both subjective and objective evaluations. Furthermore, it facilitates
cross-lingual voice conversions and enhances the quality of synthesized speech. |
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DOI: | 10.48550/arxiv.2310.06546 |