Music tone quality evaluation is generally performed by experts. It could be subjective and short of consistency and fairness as well as time-consuming. In this paper we present a new method for identifying the clarinet reed quality by evaluating tone quality based on the harmonic structure and energy distribution. We first decouple the quality of reed and clarinet pipe based on the acoustic harmonics, and discover that the reed quality is strongly relevant to the even parts of the harmonics. Then we construct a features set consisting of the even harmonic envelope and the energy distribution of harmonics in spectrum. The annotated clarinet audio data are recorded from 3 levels of performers and the tone quality is classified by machine learning. The results show that our new method for identifying low and medium high tones significantly outperforms previous methods.
翻译:音乐质量评估一般由专家进行,它可能是主观性的,缺乏一致性和公平性,而且耗费时间。在本文中,我们介绍了一种根据调音结构和能量分布评估音质质量来鉴定单簧管质量的新方法。我们首先根据声调调调调制,将簧管和单簧管的质量脱钩,发现红菜质量与口音的偶部分密切相关。然后我们建造一套功能,包括波段中气囊和能量分布。附加说明的单簧管声学数据来自3级表演者,音质质量通过机器学习分类。结果显示,我们新的中低中高度识别方法大大优于以往的方法。