局部密钥检测的正则化算法

IF 2.2 3区 心理学 0 MUSIC Musicae Scientiae Pub Date : 2024-04-22 DOI:10.1177/10298649241245075
Çınar Gedizlioğlu, Kutluhan Erol
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引用次数: 0

摘要

在音乐信息检索领域,人们对流行音乐和古典音乐中的全局调性检测进行了广泛研究,但对局部调性检测的研究较少,尽管调性是作曲风格的一个重要组成部分。正确识别调性变化边界尤其具有挑战性。我们将这一任务建模为一个优化问题,即如何将乐曲划分为不同调性的乐段,同时考虑到调性与乐段之间的匹配质量以及乐段的数量。我们使用克鲁姆汉斯尔-施穆克勒算法,并对克鲁姆汉斯尔和凯斯勒的密钥轮廓稍作修改,确定了密钥与乐段的最佳分配。我们在问题的表述中加入了正则化算法,以平衡节的数量,避免多余的调制。我们使用了一个由随机选择的 80 首不同类型和复杂程度的音乐作品组成的数据集,将我们的算法与隐马尔可夫模型(HMM)进行了比较,以确定哪种方法更适合识别局部音调。我们的方法得出的结果明显更准确,并提出了未来的研究方向。
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A regularization algorithm for local key detection
In the field of music information retrieval, the detection of global key in both popular and classical music has been studied extensively, but local key detection has been studied to a lesser extent, even though modulation is an important component of compositional style. It is particularly challenging to identify key change boundaries correctly. We modeled this task as an optimization problem, that of finding out how to divide a piece into sections in different keys taking into consideration both the quality of the fit between the key and the section and the number of sections. We determined the optimal assignment of key to section using the Krumhansl–Schmuckler algorithm with a slightly modified version of the Krumhansl and Kessler key profile. We included a regularization algorithm in the formulation of our problem to balance the number of sections and avoid superfluous modulations. Using a dataset of 80 randomly chosen pieces of music in a variety of genres and levels of complexity, we compared our algorithm with a hidden Markov model (HMM) to determine which method is better for identifying local key. Our approach yielded significantly more accurate results and suggests future avenues of research.
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来源期刊
Musicae Scientiae
Musicae Scientiae Multiple-
CiteScore
4.50
自引率
8.30%
发文量
21
期刊介绍: MUSICAE SCIENTIAE is the trilingual journal, official organ of ESCOM, published with the financial support of the Belgian Science Policy.
期刊最新文献
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