基于联合时频散射的演奏技术识别

Changhong Wang, V. Lostanlen, Emmanouil Benetos, E. Chew
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引用次数: 12

摘要

演奏技巧是音乐信号中重要的表现元素。本文提出了一种基于联合时频散射变换(jTFST)的基于音高演化的演奏技术(pet)识别系统,pet是一组音调随时间单调变化的演奏技术。jTFST在时频域中表示光谱-时间模式,捕获pet的判别信息。以中国竹笛为例,分析了竹笛中常用的三种声部特征:弹拨、奏调和滑音,并利用jTFST对其特征进行了编码。为了验证所提出的方法,我们创建了一个新的数据集CBF-petsDB,其中包含单独演奏的pet以及由专业演奏者演奏和注释的整首曲子。将jTFST输入到机器学习分类器中,我们获得了琴音检测的f值为71%,portamento检测的f值为59%,滑音检测的f值为83%,并提供了每种技术散射系数的解释性可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Playing Technique Recognition by Joint Time–Frequency Scattering
Playing techniques are important expressive elements in music signals. In this paper, we propose a recognition system based on the joint time–frequency scattering transform (jTFST) for pitch evolution-based playing techniques (PETs), a group of playing techniques with monotonic pitch changes over time. The jTFST represents spectro-temporal patterns in the time–frequency domain, capturing discriminative information of PETs. As a case study, we analyse three commonly used PETs of the Chinese bamboo flute: acciacatura, portamento, and glissando, and encode their characteristics using the jTFST. To verify the proposed approach, we create a new dataset, the CBF-petsDB, containing PETs played in isolation as well as in the context of whole pieces performed and annotated by professional players. Feeding the jTFST to a machine learning classifier, we obtain F-measures of 71% for acciacatura, 59% for portamento, and 83% for glissando detection, and provide explanatory visualisations of scattering coefficients for each technique.
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