Real-Time Music Following in Score Sheet Images via Multi-Resolution Prediction

Florian Henkel, G. Widmer
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引用次数: 3

Abstract

The task of real-time alignment between a music performance and the corresponding score (sheet music), also known as score following, poses a challenging multi-modal machine learning problem. Training a system that can solve this task robustly with live audio and real sheet music (i.e., scans or score images) requires precise ground truth alignments between audio and note-coordinate positions in the score sheet images. However, these kinds of annotations are difficult and costly to obtain, which is why research in this area mainly utilizes synthetic audio and sheet images to train and evaluate score following systems. In this work, we propose a method that does not solely rely on note alignments but is additionally capable of leveraging data with annotations of lower granularity, such as bar or score system alignments. This allows us to use a large collection of real-world piano performance recordings coarsely aligned to scanned score sheet images and, as a consequence, improve over current state-of-the-art approaches.
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通过多分辨率预测在乐谱图像中的实时音乐跟随
在音乐表演和相应的乐谱(乐谱)之间进行实时对齐的任务,也称为乐谱跟踪,提出了一个具有挑战性的多模式机器学习问题。训练一个可以通过现场音频和真实乐谱(即扫描或乐谱图像)健壮地解决此任务的系统需要在乐谱图像中的音频和音符坐标位置之间进行精确的地面真实对齐。然而,这些类型的注释很难获得且成本高,这就是为什么该领域的研究主要利用合成音频和薄片图像来训练和评估分数跟踪系统。在这项工作中,我们提出了一种方法,它不仅依赖于音符对齐,而且还能够利用具有较低粒度注释的数据,例如条形或分数系统对齐。这使我们能够使用大量真实世界的钢琴演奏录音,粗略地与扫描的乐谱图像对齐,因此,改进了目前最先进的方法。
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