Playing Technique Detection by Fusing Note Onset Information in Guzheng Performance

Dichucheng Li, Yulun Wu, Qinyu Li, Jiahao Zhao, Yi Yu, F. Xia, Wei Li
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引用次数: 3

Abstract

The Guzheng is a kind of traditional Chinese instruments with diverse playing techniques. Instrument playing techniques (IPT) play an important role in musical performance. However, most of the existing works for IPT detection show low efficiency for variable-length audio and provide no assurance in the generalization as they rely on a single sound bank for training and testing. In this study, we propose an end-to-end Guzheng playing technique detection system using Fully Convolutional Networks that can be applied to variable-length audio. Because each Guzheng playing technique is applied to a note, a dedicated onset detector is trained to divide an audio into several notes and its predictions are fused with frame-wise IPT predictions. During fusion, we add the IPT predictions frame by frame inside each note and get the IPT with the highest probability within each note as the final output of that note. We create a new dataset named GZ_IsoTech from multiple sound banks and real-world recordings for Guzheng performance analysis. Our approach achieves 87.97% in frame-level accuracy and 80.76% in note-level F1-score, outperforming existing works by a large margin, which indicates the effectiveness of our proposed method in IPT detection.
融合音符起始信息的古筝演奏技术检测
古筝是一种具有多种演奏技巧的中国传统乐器。乐器演奏技术在音乐演奏中起着重要的作用。然而,大多数现有的IPT检测工作对变长音频的检测效率较低,并且由于它们依赖于单一的声音库进行训练和测试,因此无法保证泛化。在这项研究中,我们提出了一个端到端的全卷积网络古筝演奏技术检测系统,该系统可以应用于变长音频。由于每种古筝演奏技术都应用于一个音符,因此训练了专用的起音检测器来将音频分成几个音符,并将其预测与逐帧IPT预测融合在一起。在融合过程中,我们在每个音符中逐帧添加IPT预测,并获得每个音符中概率最高的IPT作为该音符的最终输出。我们从多个声音库和真实世界的录音中创建了一个名为GZ_IsoTech的新数据集,用于古筝演奏分析。我们的方法在帧级准确率达到87.97%,在笔记级f1得分达到80.76%,大大优于现有的工作,表明我们的方法在IPT检测中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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