干唱腔分离的神经声码器特征估计

Jae-Yeol Im, Soonbeom Choi, Sangeon Yong, Juhan Nam
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引用次数: 0

摘要

歌唱声音分离(SVS)是一项将歌唱声音从其与乐器音频的混合中分离出来的任务。以往的SVS研究主要采用谱图掩模法,该方法在预测二元掩模时需要较大的维数。此外,他们还专注于提取保留湿音和混响效果的声干。这一结果可能会阻碍孤立歌声的重复使用。本文通过从混合音频中预测干歌唱声音的梅尔谱图作为神经声码器特征,并从神经声码器合成歌唱声音波形来解决这一问题。我们试验了两种分离方法。一种是预测梅尔谱域的二元掩模,另一种是直接预测梅尔谱。此外,我们添加了一个歌唱声音检测器来更明确地识别随时间变化的歌唱声音片段。我们在音频、去混响、分离和整体质量方面测量了模型的性能。结果表明,除了音质外,我们提出的模型在客观和主观评价方面都优于目前最先进的歌声分离模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Vocoder Feature Estimation for Dry Singing Voice Separation
Singing voice separation (SVS) is a task that separates singing voice audio from its mixture with instrumental audio. Previous SVS studies have mainly employed the spectrogram masking method which requires a large dimensionality in predicting the binary masks. In addition, they focused on extracting a vocal stem that retains the wet sound with the reverberation effect. This result may hinder the reusability of the isolated singing voice. This paper addresses the issues by predicting mel-spectrogram of dry singing voices from the mixed audio as neural vocoder features and synthesizing the singing voice waveforms from the neural vocoder. We experimented with two separation methods. One is predicting binary masks in the mel-spectrogram domain and the other is directly predicting the mel-spectrogram. Furthermore, we add a singing voice detector to identify the singing voice segments over time more explicitly. We measured the model performance in terms of audio, dereverberation, separation, and overall quality. The results show that our proposed model outperforms state-of-the-art singing voice separation models in both objective and subjective evaluation except the audio quality.
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