Automatic Music Transcription for the Thai Xylophone played with Soft Mallets

Apichai Huaysrijan, S. Pongpinigpinyo
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引用次数: 3

Abstract

Automatic music transcription (AMT) is the conversion of audio to music notation, which helps with music education, music production, and music creation. The Thai xylophone is a Thai classical music instrument. Commonly, Thai xylophone has two types of mallets, including soft mallets and hard mallets. This paper proposes the study of AMT for Thai xylophone played with soft mallets. We compared feature extraction using Mel-Spectrogram and Mel-Frequency Cepstral Coefficient (MFCC), as well as deep learning using the Onsets and Frames model (OaF), which is the state of the art for AMT. We collected 30 Thai xylophone played with soft mallets songs with music notation as the dataset. The results show that Mel-Spectrogram outperforms MFCC. The experiment shows that Mel-Spectrogram with the OaF model performed the best on the frame detector with 87.04% of F1-Score and the onset detector with 94.35% of F1-Score. We also conduct ablation research.
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用软木槌演奏的泰国木琴的自动音乐转录
自动音乐转录(AMT)是将音频转换为音乐符号,有助于音乐教育,音乐制作和音乐创作。泰国木琴是一种泰国古典乐器。通常,泰国木琴有两种木槌,包括软木槌和硬木槌。本文提出对泰国软槌木琴的AMT进行研究。我们比较了使用Mel-Spectrogram和Mel-Frequency Cepstral Coefficient (MFCC)的特征提取,以及使用Onsets和Frames模型(OaF)的深度学习,这是AMT的最新技术。我们收集了30首泰国木琴用软木槌演奏的乐曲作为数据集。结果表明,mel谱图优于MFCC。实验结果表明,基于OaF模型的Mel-Spectrogram在帧检测器和起始检测器上的表现最佳,分别达到了87.04%和94.35%的F1-Score。我们也进行消融研究。
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