多结构爪哇加麦兰音符生成器的深度学习

Arik Kurniawati, E. M. Yuniarno, Y. Suprapto
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引用次数: 0

摘要

爪哇加麦兰是印尼的一种传统音乐风格,有几种称为 "Gendhing "的歌曲结构。Gendhing(歌曲)以传统记谱法书写,要求加麦兰音乐家识别每首歌结构中的模式。以往对 "根丁 "的研究通常侧重于艺术和民族音乐学角度,而本研究则旨在探索作为印尼传统音乐的 "根丁 "与替代加麦兰作曲家任务的深度学习技术之间的相关性。本研究建议使用 CNN-LSTM,根据 Balungan 记谱法、节奏、曲式结构和 gatra 信息,生成 ricikan 结构乐器的记谱,作为爪哇加麦兰音乐作品的伴奏。本研究将所提出的方法(CNN-LSTM)与 LSTM 和 CNN 进行了比较。本研究中的音乐数据使用数字符号来表示巴隆甘符号中的主旋律。实验结果表明,与 LSTM 和 CNN 模型相比,CNN-LSTM 模型表现出更好的性能,CNN-LSTM、LSTM 和 CNN 的准确率分别为 91.9%、91.5% 和 91.2%。而对于 Sampak 歌曲结构,CNN-LSTM 模型的音符距离值为 4,LSTM 模型为 8,CNN 模型为 12。音符距离越小,就越接近加麦兰作曲家提供的原始符号。这项研究为有兴趣学习卡拉威坦的加麦兰音乐新手提供了借鉴,尤其是在理解ricikan结构音乐符号和加麦兰艺术在创作歌曲音乐作品方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Multi-Structured Javanese Gamelan Note Generator
Javanese gamelan, a traditional Indonesian musical style, has several song structures called gendhing. Gendhing (songs) are written in conventional notation and require gamelan musicians to recognize patterns in the structure of each song. Usually, previous research on gendhing focuses on artistic and ethnomusicological perspectives, but this study is to explore the correlation between gendhing as traditional music in Indonesia and deep learning technology that replaces the task of gamelan composers. This research proposes CNN-LSTM to generate notation of ricikan struktural instruments as an accompaniment to Javanese gamelan music compositions based on balungan notation, rhythm, song structure, and gatra information. This proposed method (CNN-LSTM) is compared with LSTM and CNN. The musical data in this study is represented using numerical notation for the main melody in balungan notation. The experimental results showed that the CNN-LSTM model showed better performance compared to the LSTM and CNN models, with accuracy values of 91.9%, 91.5%, and 91.2% for CNN-LSTM, LSTM, and CNN, respectively. And the value of note distance for the Sampak song structure is 4 for the CNN-LSTM model, 8 for the LSTM model, and 12 for the CNN model. The smaller the note distance, the closer it is to the original notation provided by the gamelan composer. This study provides relevance for novice gamelan musicians who are interested in learning karawitan, especially in understanding ricikan struktural music notation and gamelan art in composing musical compositions of a song.
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