A novel Xi’an drum music generation method based on Bi-LSTM deep reinforcement learning

被引:0
|
作者
Peng Li
Tian-mian Liang
Yu-mei Cao
Xiao-ming Wang
Xiao-jun Wu
Lin-yi Lei
机构
[1] Ministry of Culture and Tourism,Key Laboratory of Intelligent Computing and Service Technology for Folk Song
[2] Shaanxi Normal University,School of Computer Science
[3] Engineering Laboratory of Teaching Information Technology of Shaanxi Province,Key Laboratory of Modern Teaching Technology
[4] Ministry of Education,undefined
[5] Xi’an Key Laboratory of Cultural Tourism Resources Development and Utilization,undefined
[6] Chang’an District Cultural Center,undefined
来源
Applied Intelligence | 2024年 / 54卷
关键词
Xi'an drum music; Bi-LSTM; Deep reinforcement learning; Music generation;
D O I
暂无
中图分类号
学科分类号
摘要
Chinese Folk Drum music is an excellent traditional cultural resource, it has brilliant historical and cultural heritage and excellent traditional cultural connotation. However, the survey found that the social and cultural values, tourism economic values, and national self-confidence embodied in folk drum music, such as Xi'an drum music, are far from being released, and even its own inheritance and development are facing difficulties. The research focuses on the automatic generation of Xi'an drum music, with the aim of further inheriting, developing, and utilizing this exceptional traditional cultural resource. While Artificial Intelligence (AI) music generation has gained popularity in recent years, most platforms primarily focus on modern music rather than Chinese folk music. To address these issues and the unique challenges faced by Xi'an drum music, this paper proposes a Bi-LSTM network-based deep reinforcement learning model. The model incorporates the distinctive characteristics of ancient Chinese music, such as pitch, chord, and mode, and utilizes the Actor-Critic algorithm in reinforcement learning. During the simulation generation stage, an improved method of generating strategies through reward and punishment scores is introduced. Additionally, the model takes into account abstract concept constraints, such as chord progression and music theory rules, which are translated into computer language. By constructing a chord reward mechanism and a music principle reward mechanism, the model achieves harmony constraints and enables the systematic generation of drum music. Experimental results demonstrate that the proposed model, based on Bi-LSTM deep reinforcement learning, can generate Xi'an drum music with high quality and artistic aesthetics. This research contributes to the preservation, development, and utilization of Xi'an drum music, leveraging advancements in AI music generation technology.
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页码:80 / 94
页数:14
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