基于非平行语料库的唱腔转换

Wenyao Deng, Wei Zhao, Lin Qi, Cong Jin
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引用次数: 0

摘要

随着深度学习的不断发展,对歌唱声音转换的研究也逐渐丰富起来。歌唱声音转换的研究来源于声音转换。歌唱声音转换是在不改变源歌手声音内容的情况下,演唱目标歌手的声音。本文使用WORLD声码器和语音信号处理工具包(SPTK)提取歌曲的声学特征,并使用两个镜像生成对抗网络完成声学特征的转换。实验实现了非平行语料库的唱腔转换。主观评价表明,转换后的歌曲在音质和相似度上都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Singing Voice Conversion Based on Non-Parallel Corpus
With the continuous development of deep learning, research on the conversion of singing voice has gradually enriched. The study of singing voice conversion comes from voice conversion. The singing voice conversion is to sing the voice of the target singer without changing the sound content of the source singer. In this paper, we use WORLD vocoder and speech signal processing toolkit (SPTK) to extract the acoustic characteristics of songs and use two mirrored generative adversarial Nets complete the conversion of acoustic features. The experiment realizes the singing conversion of non-parallel corpus. Subjective evaluations show that the songs after the conversion have a good performance in the quality and similarity of the songs.
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