基于中国传统音乐特征的情绪调节音乐标注模型

Zhenghao He, Ruifan Chen, Yayue Hou, Fei Xie, Xiaoliang Gong, A. Cohn
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引用次数: 0

摘要

几千年来,基于中国传统音乐的情绪调节的有效性已经在临床试验中得到证实,但原因尚不清楚。本文旨在利用特征工程寻找有效的音乐特征,有效地对不同类型的音乐进行分类,从而尝试为构建可用于情绪调节和音乐治疗的音乐库提供一个自动识别框架。在这部作品中,使用了中国传统音乐曲目中的五个调式(相当于西方音乐的音阶),可以用来调节孤独、焦虑、愤怒、喜悦和恐惧。提取音乐片段的不同长度片段的特征,包括Chroma、Mel-spectrogram、Tonnetz和全特征向量特征,然后使用卷积神经网络(CNN)构建五种模式的分类模型。结果表明,在包含5个音乐片段的Mel地图上,获得了最高的5类分类准确率71.09%。然后使用不同个体特征模型的加权组合构建音乐模式标记模型。然后对13首不同音乐风格的乐曲进行了定性评价,结果从乐理角度来看是合理的。在未来的工作中,这个音乐标签模型将在更多类型的曲目上进行测试,以更好地评估其可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Music Labeling Model Based on Traditional Chinese Music Characteristics for Emotional Regulation
The effectiveness of emotion regulation based on traditional Chinese music has been verified in clinical trials over thousands of years, but the reasons are unclear. This paper aims to use feature engineering to find effective music features which are effective for classifying different types of music and thus to try to provide an automatic recognition framework for building music libraries that can be used for mood regulation and music therapy. In this work, five modes (equivalent to the scales of Western music) of traditional Chinese music repertoire which can be used to regulate loneliness, anxiety, anger, joy, and fear are used. Features including Chroma, Mel-spectrogram, Tonnetz, and full feature vector features, are extracted for different length fragments of a piece of music which are then used to build a classification model for the five modes using a convolutional neural network (CNN). The results show that the highest 5-classes classification accuracy, 71.09%, is achieved from a Mel map of 5s music clips. A music mode labeling model is then constructed using a weighted combination of the different individual feature models. This model was then qualitatively evaluated on 13 pieces of music in different musical styles, and the results were reasonable from a music theory perspective. In future work, this music labeling model will be tested on more types of tracks to better assess its reliability.
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