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SINGING VOICE TIMBRE CLASSIFICATION OF CHINESE POPULAR MUSIC

机译:唱歌语音纪笛分类中国流行音乐

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Singing voice plays an important role in the listening experience of music. In this paper, we propose to classify popular music by the timbre quality of the singing voice. Specifically, we adopt six singing voice timbre classes as the taxonomy and build a new data set, KKTIC, that contains the expert annotations of 387 Chinese popular songs. To build an automatic classifier, we resort to signal processing and machine learning techniques and extract a number of singing voice-related features such as vibrato and harmonic-to-noise ratio, We also propose the use of vocal segment detection and singing voice separation as preprocessing steps. Our evaluation identifies the relevant acoustic features and validates the importance of these preprocessing steps. The accuracy in timbre classification reaches 79.84% in a five-fold stratified cross validation.
机译:唱歌的声音在音乐的听力体验中起着重要作用。在本文中,我们建议通过歌唱声音的Timbre品质来分类流行音乐。具体而言,我们采用六个歌唱语法课程作为分类系统,并建立一个新的数据集,kktic,其中包含387歌曲的专家注释。要建立一个自动分类器,我们度假发出信号处理和机器学习技术,提取了许多歌唱语音相关的特征,如颤音和谐波 - 噪声比,我们还提出了使用声学段检测和唱歌语音分离预处理步骤。我们的评估标识了相关的声学功能,并验证了这些预处理步骤的重要性。 Timbre分类的准确性在五倍分层的交叉验证中达到79.84%。

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