School of Music and Dance, Guangzhou University, Guangzhou 510006, Guangdong, China.
Comput Intell Neurosci. 2022 Feb 12;2022:9274098. doi: 10.1155/2022/9274098. eCollection 2022.
Choreography is an art form in and of itself. Because music and dance have always appeared at the same time throughout human history, music has had a significant influence on dance arrangement. It is important to arrange appropriate dance movements based on the music pieces chosen by users when creating choreography. This paper proposes a mixed density network-based music choreography algorithm in response to the current state of music choreography. The algorithm should be able to convert motion and music signals into a high-level semantic meaning that is compatible with human cognition, compare the degree of matching, and arrange the dance based on the music and motion segments that match. Furthermore, the consistency and authenticity of the movements in the dance created in this paper have been improved. Users' subjective feedback indicates that the choreography results in this paper are more closely aligned with the music. In the field of music choreography, it has some practical utility.
编舞本身就是一种艺术形式。由于音乐和舞蹈在人类历史上一直同时出现,音乐对舞蹈编排有很大的影响。在创作编舞时,根据用户选择的音乐作品编排合适的舞蹈动作非常重要。针对当前音乐编舞的现状,本文提出了一种基于混合密度网络的音乐编舞算法。该算法应能够将运动和音乐信号转换为与人的认知相兼容的高级语义,比较匹配程度,并根据匹配的音乐和运动片段安排舞蹈。此外,本文所创作的舞蹈动作的一致性和真实性得到了提高。用户的主观反馈表明,本文的编舞结果与音乐更为契合。在音乐编舞领域具有一定的实用价值。