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Automatic music transcription for traditional woodwind instruments sopele

机译:传统木管乐器的自动音乐转录

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Sopela is a traditional hand-made woodwind instrument, commonly played in pair, characteristic to the Istrian peninsula in western Croatia. Its piercing sound, accompanied by two-part singing in the hexatonic Istrian scale, is registered in the UNESCO Representative List of the Intangible Cultural Heritage of Humanity. This paper presents an insight study of automatic music transcription (AMT) for sopele tunes. The process of converting audio inputs into human-readable musical scores involves multi-pitch detection and note tracking. The proposed solution supports this process by utilising frequency-feature extraction, supervised machine learning (ML) algorithms, and postprocessing heuristics. We determined the most favourable tone-predicting model by applying grid search for two state-of-the-art ML techniques, optionally coupled with frequency-feature extraction. The model achieved promising transcription accuracy for both monophonic and polyphonic music sources encompassed in the originally developed dataset. In addition, we developed a proof-of-concept AMT system, comprised of a client mobile application and a server-side API. While the mobile application records, tags and uploads audio sources, the back-end server applies the presented procedure for converting recorded music into a common notation to be delivered as a transcription result. We thus demonstrate how collecting and preserving traditional sopele music, performed in real-life occasions, can be effortlessly accomplished on-the-go. (C) 2019 Elsevier B.V. All rights reserved.
机译:Sopela是一种传统的手工制作的木管乐器,通常成对演奏,是克罗地亚西部伊斯特拉半岛的特色。其刺耳的声音,伴随着以伊斯托里亚六分音阶的两声演唱,被联合国教科文组织列为人类非物质文化遗产代表作名录。本文介绍了用于自动音乐配乐的深刻的研究。将音频输入转换为人类可读的乐谱的过程涉及多音高检测和音符跟踪。所提出的解决方案通过利用频率特征提取,有监督的机器学习(ML)算法和后处理启发式方法来支持此过程。我们通过对两种最先进的ML技术应用网格搜索来确定最有利的音调预测模型,还可以选择结合频率特征提取。对于原始开发的数据集中包含的单声道和复音音乐源,该模型均实现了令人满意的转录准确性。此外,我们开发了概念验证AMT系统,该系统由客户端移动应用程序和服务器端API组成。在移动应用程序记录,标记和上载音频源的同时,后端服务器应用所提出的过程将记录的音乐转换为通用符号,以作为转录结果传递。因此,我们演示了如何在旅途中轻松完成收集和保存在现实生活中进行的传统纯音乐的工作。 (C)2019 Elsevier B.V.保留所有权利。

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