Emotion Selectable End-to-End Text-based Speech Editing
Tao Wang, Jiangyan Yi, Ruibo Fu, Jianhua Tao, Zhengqi Wen, Chu Yuan, Zhang

TL;DR
This paper introduces Emo-CampNet, an end-to-end model for text-based speech editing that allows users to add emotional effects to speech, improving expressiveness and enabling editing of unseen speakers' speech.
Contribution
The paper presents Emo-CampNet, a novel emotion-selectable speech editing model with a neutral content generator and data augmentation techniques for editing unseen speakers.
Findings
Effective control of speech emotion during editing
Ability to edit speech of unseen speakers
Enhanced speech expressiveness through emotional attributes
Abstract
Text-based speech editing allows users to edit speech by intuitively cutting, copying, and pasting text to speed up the process of editing speech. In the previous work, CampNet (context-aware mask prediction network) is proposed to realize text-based speech editing, significantly improving the quality of edited speech. This paper aims at a new task: adding emotional effect to the editing speech during the text-based speech editing to make the generated speech more expressive. To achieve this task, we propose Emo-CampNet (emotion CampNet), which can provide the option of emotional attributes for the generated speech in text-based speech editing and has the one-shot ability to edit unseen speakers' speech. Firstly, we propose an end-to-end emotion-selectable text-based speech editing model. The key idea of the model is to control the emotion of generated speech by introducing additional…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Multimodal Machine Learning Applications · Natural Language Processing Techniques
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
