TTS - VLSP 2021: Development of Smartcall Vietnamese Text-to-Speech

Nguyen Quoc Bao, Le Ba Hoai, N. Hoc, Dam Ba Quyen, Nguyen Thu Phuong
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Abstract

Recent advances in deep learning facilitate the development of end-to-end Vietnamese text-to-speech (TTS) systems with high intelligibility and naturalness in the presence of a clean training corpus. Given a rich source of audio recording data on the Internet, TTS has excellent potential for growth if it can take advantage of this data source. However, the quality of these data is often not sufficient for training TTS systems, e.g., noisy audio. In this paper, we propose an approach that preprocesses noisy found data on the Internet and trains a high-quality TTS model on the processed data. The VLSP-provided training data was thoroughly preprocessed using 1) voice activity detection, 2) automatic speech recognition-based prosodic punctuation insertion, and 3) Spleeter, source separation tool, for separating voice from background music. Moreover, we utilize a state-of-the-art TTS system that takes advantage of the Conditional Variational Autoencoder with the Adversarial Learning model. Our experiment showed that the proposed TTS system trained on the preprocessed data achieved a good result on the provided noisy dataset.
TTS - VLSP 2021:智能呼叫越南文转语音的发展
深度学习的最新进展促进了端到端越南语文本到语音(TTS)系统的发展,在干净的训练语料库的存在下具有高可理解性和自然性。鉴于Internet上有丰富的音频记录数据源,如果TTS能够利用这些数据源,它将具有极好的增长潜力。然而,这些数据的质量往往不足以训练TTS系统,例如噪声音频。在本文中,我们提出了一种对互联网上有噪声的发现数据进行预处理并在处理后的数据上训练高质量的TTS模型的方法。对vlsp提供的训练数据进行预处理,采用1)语音活动检测,2)基于语音自动识别的韵律标点插入,3)源分离工具Spleeter将语音与背景音乐分离。此外,我们利用了最先进的TTS系统,该系统利用了具有对抗学习模型的条件变分自编码器。实验表明,本文提出的TTS系统在预处理数据的基础上,在给定的噪声数据集上取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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