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Musical Similarity and Commonness Estimation Based on Probabilistic Generative Models of Musical Elements

机译:基于音乐元素概率生成模型的音乐相似度和共性估计

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This paper proposes a novel concept we call musical commonness, which is the similarity of a song to a set of songs; in other words, its typicality. This commonness can be used to retrieve representative songs from a set of songs (e.g. songs released in the 80s or 90s). Previous research on musical similarity has compared two songs but has not evaluated the similarity of a song to a set of songs. The methods presented here for estimating the similarity and commonness of polyphonic musical audio signals are based on a unified framework of probabilistic generative modeling of four musical elements (vocal timbre, musical timbre, rhythm, and chord progression). To estimate the commonness, we use a generative model trained from a song set instead of estimating musical similarities of all possible song-pairs by using a model trained from each song. In experimental evaluation, we used two song-sets: 3278 Japanese popular music songs and 415 English songs.Twenty estimated song-pair similarities for each element and each song- set were compared with ratings by a musician. The comparison with the results of the expert ratings suggests that the proposed methods can estimate musical similarity appropriately. Estimated musical commonnesses are evaluated on basis of the Pearson product-moment correlation coefficients between the estimated commonness of each song and the number of songs having high similarity with the song. Results of commonness evaluation show that a song having higher commonness is similar to songs of a song set.
机译:本文提出了一个新颖的概念,我们称之为音乐共通性,即一首歌曲与一组歌曲的相似性。换句话说,它的典型性。这种通用性可用于从一组歌曲(例如80年代或90年代发行的歌曲)中检索代表性歌曲。先前关于音乐相似性的研究已经比较了两首歌曲,但没有评估一首歌曲与一组歌曲的相似性。此处介绍的用于估计复音音乐音频信号的相似性和通用性的方法是基于对四个音乐元素(声音音色,音乐音色,节奏和和弦进行)的概率生成建模的统一框架。为了估计共性,我们使用从歌曲集中训练的生成模型,而不是通过使用从每首歌曲训练的模型来估计所有可能的歌曲对的音乐相似性。在实验评估中,我们使用了两种歌曲集:3278首日本流行音乐歌曲和415首英语歌曲。将每个元素和每首歌曲的二十个估计歌曲对相似性与音乐家的评分进行比较。与专家评级结果的比较表明,所提出的方法可以适当地估计音乐相似性。基于每首歌曲的估计共同性和与该歌曲具有高度相似性的歌曲数量之间的皮尔逊积矩相关系数来评估估计的音乐共同性。共同性评价的结果表明,具有较高共同性的歌曲与歌曲集中的歌曲相似。

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