论文标题
Tabla Solo表演的结构分割和标记
Structural Segmentation and Labeling of Tabla Solo Performances
论文作者
论文摘要
Tabla是一种北印度打击乐器,用作伴奏和独家表演的独家乐器。 Tabla Solo复杂且精致,通过一系列具有共同节奏特征标记的均匀部分表现出节奏的演变。每个部分都有与之关联的特定结构和名称。印度次大陆的塔布拉学习和表现基于名为Gharana-S的风格学校。每个部分都播放了来自不同Gharana-S的各种作曲家的几种作品。本文介绍了将Tabla Solo音乐会分为音乐有意义的部分的任务。然后,我们分配合适的部分标签,并从各节中识别Gharana-S。我们为这项任务提供了超过38个小时的独奏桌唱片的多样化集合。我们激励问题,并提出任务的不同挑战和方面。受Tabla Solo的独特音乐属性的启发,我们为分割任务计算了几个节奏和音板特征。这项工作探讨了通过以无监督的方式分析局部自相似性来自动定位节奏结构的重大变化的方法。我们还探索了有监督的随机森林和卷积神经网络,该网络接受了手工制作的功能。在一组持有的录音中,还测试了受监督和无监督的方法。将音频片段分割成其结构组件和标签对于许多音乐信息检索应用程序至关重要,例如重复结构查找,音频摘要和快速的音乐导航至关重要。这项工作有助于我们获得Tabla Solo音乐会的全面音乐描述。
Tabla is a North Indian percussion instrument used as an accompaniment and an exclusive instrument for solo performances. Tabla solo is intricate and elaborate, exhibiting rhythmic evolution through a sequence of homogeneous sections marked by shared rhythmic characteristics. Each section has a specific structure and name associated with it. Tabla learning and performance in the Indian subcontinent is based on stylistic schools called gharana-s. Several compositions by various composers from different gharana-s are played in each section. This paper addresses the task of segmenting the tabla solo concert into musically meaningful sections. We then assign suitable section labels and recognize gharana-s from the sections. We present a diverse collection of over 38 hours of solo tabla recordings for the task. We motivate the problem and present different challenges and facets of the tasks. Inspired by the distinct musical properties of tabla solo, we compute several rhythmic and timbral features for the segmentation task. This work explores the approach of automatically locating the significant changes in the rhythmic structure by analyzing local self-similarity in an unsupervised manner. We also explore supervised random forest and a convolutional neural network trained on hand-crafted features. Both supervised and unsupervised approaches are also tested on a set of held-out recordings. Segmentation of an audio piece into its structural components and labeling is crucial to many music information retrieval applications like repetitive structure finding, audio summarization, and fast music navigation. This work helps us obtain a comprehensive musical description of the tabla solo concert.