Key distributions as musical fingerprints for similarity assessment

Arpi Mardirossian, E. Chew
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引用次数: 5

Abstract

This paper presents a pitch-based approach for creating musical fingerprints for similarity assessment. An effective measure for musical similarity impacts music indexing and classification in music retrieval systems. The proposed method creates key distributions from polyphonic music, and compares the key distributions of pairs of pieces, by calculating their correlation coefficient, to determine a degree of similarity between them. The proposed method assumes no knowledge of the time structure of the piece, nor does it require pieces to be the same length. We present results using this method to assess similarity among selected variations by Mozart. The results show that the correlation coefficients of pieces from the same set of variations are centered on 0.88 (with a standard deviation of 0.11), and that of pieces across different sets of variations are centered on 0.32 (with a standard deviation of 0.31).
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琴键分布作为相似度评估的音乐指纹
本文提出了一种基于音高的方法来创建相似度评估的音乐指纹。在音乐检索系统中,音乐相似度的有效度量影响着音乐的索引和分类。提出的方法从复调音乐中创建键分布,并通过计算它们的相关系数来比较对片段的键分布,以确定它们之间的相似程度。所提出的方法假设不知道片段的时间结构,也不要求片段的长度相同。我们使用这种方法来评估选定的莫扎特变奏曲之间的相似性。结果表明,同一变异集的相关系数以0.88为中心(标准差为0.11),不同变异集的相关系数以0.32为中心(标准差为0.31)。
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