FluentEditor2: Text-based Speech Editing by Modeling Multi-Scale Acoustic and Prosody Consistency
Rui Liu, Jiatian Xi, Ziyue Jiang, Haizhou Li

TL;DR
FluentEditor2 introduces a multi-scale acoustic and prosody consistency training scheme for text-based speech editing, significantly improving fluency and naturalness over existing methods.
Contribution
It proposes hierarchical local acoustic smoothness and contrastive global prosody constraints to enhance speech fluency and consistency in TSE.
Findings
Outperforms existing neural TSE methods on VCTK and LibriTTS datasets.
Achieves higher subjective and objective speech quality metrics.
Ablation studies confirm effectiveness of each module.
Abstract
Text-based speech editing (TSE) allows users to edit speech by modifying the corresponding text directly without altering the original recording. Current TSE techniques often focus on minimizing discrepancies between generated speech and reference within edited regions during training to achieve fluent TSE performance. However, the generated speech in the edited region should maintain acoustic and prosodic consistency with the unedited region and the original speech at both the local and global levels. To maintain speech fluency, we propose a new fluency speech editing scheme based on our previous \textit{FluentEditor} model, termed \textit{\textbf{FluentEditor2}}, by modeling the multi-scale acoustic and prosody consistency training criterion in TSE training. Specifically, for local acoustic consistency, we propose \textit{hierarchical local acoustic smoothness constraint} to align the…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Natural Language Processing Techniques · Speech and dialogue systems
MethodsALIGN · Focus
