基于图神经网络的符号古典音乐节奏检测

E. Karystinaios, G. Widmer
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引用次数: 5

摘要

节奏是一种复杂的结构,从对位复调开始直到今天一直推动着音乐的发展。检测这种结构对于许多MIR任务至关重要,例如音乐学分析、键检测或音乐分割。然而,自动节奏检测仍然具有挑战性,主要是因为它涉及高级音乐元素的组合,如和声、声导和节奏。在这项工作中,我们提出了符号分数的图表示作为解决节奏检测任务的中间手段。我们使用图卷积网络将节奏检测作为一个不平衡节点分类问题。我们得到的结果与目前的技术水平大致相当,并且我们提出了一个能够在多个粒度级别(从单个音符到节拍)上进行预测的模型,这要归功于细粒度、逐个音符的表示。此外,我们的实验表明,图卷积可以学习辅助节奏检测的非局部特征,从而使我们不必设计编码非局部上下文的专门特征。我们认为,这种对乐谱和分类任务建模的一般方法有许多潜在的优势,超出了这里提出的特定识别任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cadence Detection in Symbolic Classical Music using Graph Neural Networks
Cadences are complex structures that have been driving music from the beginning of contrapuntal polyphony until today. Detecting such structures is vital for numerous MIR tasks such as musicological analysis, key detection, or music segmentation. However, automatic cadence detection remains challenging mainly because it involves a combination of high-level musical elements like harmony, voice leading, and rhythm. In this work, we present a graph representation of symbolic scores as an intermediate means to solve the cadence detection task. We approach cadence detection as an imbalanced node classification problem using a Graph Convolutional Network. We obtain results that are roughly on par with the state of the art, and we present a model capable of making predictions at multiple levels of granularity, from individual notes to beats, thanks to the fine-grained, note-by-note representation. Moreover, our experiments suggest that graph convolution can learn non-local features that assist in cadence detection, freeing us from the need of having to devise specialized features that encode non-local context. We argue that this general approach to modeling musical scores and classification tasks has a number of potential advantages, beyond the specific recognition task presented here.
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