Text-to-speech with linear spectrogram prediction for quality and speed improvement

Hyebin Yoon, Hosung Nam
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Abstract

Most neural-network-based speech synthesis models utilize neural vocoders to convert mel-scaled spectrograms into high-quality, human-like voices. However, neural vocoders combined with mel-scaled spectrogram prediction models demand considerable computer memory and time during the training phase and are subject to slow inference speeds in an environment where GPU is not used. This problem does not arise in linear spectrogram prediction models, as they do not use neural vocoders, but these models suffer from low voice quality. As a solution, this paper proposes a Tacotron 2 and Transformer-based linear spectrogram prediction model that produces high-quality speech and does not use neural vocoders. Experiments suggest that this model can serve as the foundation of a high-quality text-to-speech model with fast inference speed.
文本到语音的线性谱图预测质量和速度的提高
大多数基于神经网络的语音合成模型利用神经声码器将梅尔尺度的声谱图转换成高质量的、类似人类的声音。然而,神经声码器与mel尺度谱图预测模型相结合,在训练阶段需要相当大的计算机内存和时间,并且在不使用GPU的环境中,推理速度较慢。这个问题在线性谱图预测模型中不会出现,因为它们不使用神经声码器,但这些模型的语音质量很低。作为解决方案,本文提出了一种基于Tacotron 2和transformer的线性谱图预测模型,该模型可以产生高质量的语音,并且不使用神经声码器。实验表明,该模型可以作为高质量的文本到语音模型的基础,具有快速的推理速度。
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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