基于对抗网络的多语音模式转换

Kumud Tripathi, Jatin Kumar
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引用次数: 0

摘要

多语音模式转换(MSMT)的目标是根据语音的模式特征将语音从一种形式转换为另一种形式。在这项工作中,我们探讨了三种不同的语言模式(对话、即兴和阅读模式)在保留说话者身份和语言内容的情况下的相互转换。为了实现这一点,我们使用了星生成对抗网络(StarGAN)的一个变体,名为StarGAN- vc。对于训练,我们的模型不需要句子的并行出现,并且使用相对较少的训练示例,我们能够生成高质量的转换输出。通过客观和主观评价,推导出转换后的语音模式输出与目标语音模式具有较高的可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Speech Mode Transformation using Adversarial Network
The objective of Multiple Speech Mode Transformation (MSMT) is to transform speech from one form to another on the basis of their mode characteristics. In this work, we have explored three different modes of speech (conversation, extempore, and read modes) for their inter-conversion while preserving the speaker identity and the linguistic content. To accomplish this we used a variant of Star Generative Adversarial Network (StarGAN) named as StarGAN-VC. For training, our model does not require parallel occurrences of the sentences and with relatively lesser number of training example we were able to generate high quality transformed outputs. On conducting objective and subjective evaluations, it is deduced that the transformed speech mode outputs are highly comparable to the target speech mode.
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