Speech Synthesis for Speaker Timbre Translation Across Languages

Jiangfeng Liu, Yongbin Guo, Jinbiao Chen, Zixu Wang, Aihua Mao
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Abstract

We propose a cross-lingual TTS model based on the neural network. The model is capable of synthesizing speech across languages and translating the speaker's timbre. It uses a few seconds of untranscribed reference audio of the target speaker to synthesize the new speech of that speaker. The model consists of a separate speaker encoder, STT Translator, synthesizer, and vocoder. We decouple speaker information and speech to build a speaker recognition network. Our synthesizer is mainly built based on the Tacotron model and is divided into three parts: encoder, attention mechanism and decoder. The vocoder, on the other hand, is based on two methods, WaveRNN and HiFi-GAN, and serves to predict the synthesized waveform using the Mel spectrum. We conducted experiments to analyze the effectiveness of our approach. Besides, we also analyzed the effect of different datasets on the training effect.
跨语言说话人音色翻译的语音合成
提出了一种基于神经网络的跨语言TTS模型。该模型能够跨语言合成语音并翻译说话人的音色。它使用目标说话人的几秒钟未转录的参考音频来合成该说话人的新语音。该模型由独立的扬声器编码器、STT转换器、合成器和声码器组成。我们对说话人信息和语音进行解耦,构建说话人识别网络。我们的合成器主要基于Tacotron模型构建,分为三部分:编码器、注意机制和解码器。另一方面,声码器基于WaveRNN和HiFi-GAN两种方法,并用于使用Mel频谱预测合成波形。我们进行了实验来分析我们方法的有效性。此外,我们还分析了不同数据集对训练效果的影响。
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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