The text-based speech editor allows the editing of speech through intuitive cutting, copying, and pasting operations to speed up the process of editing speech. However, the major drawback of current systems is that edited speech often sounds unnatural due to cut-copy-paste operation. In addition, it is not obvious how to synthesize records according to a new word not appearing in the transcript. This paper proposes a novel end-to-end text-based speech editing method called context-aware mask prediction network (CampNet). The model can simulate the text-based speech editing process by randomly masking part of speech and then predicting the masked region by sensing the speech context. It can solve unnatural prosody in the edited region and synthesize the speech corresponding to the unseen words in the transcript. Secondly, for the possible operation of text-based speech editing, we design three text-based operations based on CampNet: deletion, insertion, and replacement. These operations can cover various situations of speech editing. Thirdly, to synthesize the speech corresponding to long text in insertion and replacement operations, a word-level autoregressive generation method is proposed. Fourthly, we propose a speaker adaptation method using only one sentence for CampNet and explore the ability of few-shot learning based on CampNet, which provides a new idea for speech forgery tasks. The subjective and objective experiments on VCTK and LibriTTS datasets show that the speech editing results based on CampNet are better than TTS technology, manual editing, and VoCo method. We also conduct detailed ablation experiments to explore the effect of the CampNet structure on its performance. Finally, the experiment shows that speaker adaptation with only one sentence can further improve the naturalness of speech. Examples of generated speech can be found at https://hairuo55.github.io/CampNet.
翻译:基于文本的语音编辑器允许通过直观的剪切、复制和粘贴操作编辑语音,以加快编辑语音的过程。 但是,当前系统的主要缺点是,由于剪切复制版的操作,编辑的语音由于剪切版的打印-paste 操作而常常听起来不正常。 此外,还不清楚如何根据一个没有出现在抄录中的新的单词合成记录。本文建议采用一个全新的基于文本的语音编辑方法,称为基于语端到终端的基于文本的语音编辑方法,称为“CampNet ” 。模型可以通过随机遮盖部分语音,然后通过感测详细语音环境来预测隐藏的区域。它能够解决编辑区域不正常的运行状态,并综合与抄录中未知的单词拼接的语音。第二,对于基于文本的语音编辑可能操作,我们设计了三种基于文本的语音编辑操作方法,即删除、插入和替换。这些操作可以覆盖各种语音编辑情况。第三,将基于插入和替换操作中找到的长文本的语音编辑过程,一种是单级的自动递增的语音编辑方法,我们建议“Camptrodeal-deal ex ex exal exal exal exal exal dal exal dal exal exal exal ex exal lacudududududududududuction acududududududududududuction a ex lection a ex a ex a ex ex ex ex liblemental ex ex ex ex ex ex dududududududududududududuction ablemental duction ableglegleglegleglementaldal ledal ex libledal libledal ledal ledal ledal ledal daldal ex ex ex ex exaldaldaldaldal ex ex ex ex ex ex ex ex ex ex ex lidal ex ex ex ex exal ex ex ex ex ex a ex a ex a ex a ex ex a ex