基于改进复合词的多乐器音乐生成模型

Yi-Jr Liao, Wang Yue, Yuqing Jian, Zijun Wang, Yuchong Gao, Chenhao Lu
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引用次数: 0

摘要

在这项工作中,我们解决了多乐器音乐生成的任务。值得注意的是,随着人工神经网络的发展,深度学习已经成为加速自动音乐生成的主要技术,并且在许多先前的论文中都有介绍,如MuseGan[1], MusicBert[2]和PopMAG[3]。然而,它们很少实现多乐器音乐的精心设计的表示,也没有一个模型完美地引入了音乐理论的先验知识。在本文中,我们利用Compound Word[4]和R-drop[5]方法来完成多乐器音乐生成任务。客观评价和主观评价表明,生成的音乐训练时间少,音乐质量突出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MICW: A Multi-Instrument Music Generation Model Based on the Improved Compound Word
In this work, we address the task of multi-instrument music generation. Notably, along with the development of artificial neural networks, deep learning has become a leading technique to accelerate the automatic music generation and is featured in many previous papers like MuseGan[1], MusicBert[2], and PopMAG[3]. However, seldom of them implement a well-designed representation of multi-instrumental music, and no model perfectly introduces a prior knowledge of music theory. In this paper, we leverage the Compound Word[4] and R-drop[5] method to work on multi-instrument music generation tasks. Objective and subjective evaluations show that the generated music has cost less training time, and achieved prominent music quality.
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