基于顺序模式对齐的有效音乐检索

Ja-Hwung Su, Shao-Yu Fu, V. Tseng
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引用次数: 0

摘要

由于音乐数据的快速增长,如何有效、高效地检索感兴趣的音乐片段是近年来一个引人关注的问题。在传统的音乐检索系统中,最常用的方法是通过匹配查询词和文件名、艺术家等音乐配置文件来检索音乐作品。然而,这种类型的音乐检索系统存在语义缺口问题。针对这一问题,本文提出了一种新的基于模式的音乐检索方法,即PBMR,该方法利用声学内容的时间连续性来表示音乐特征。也就是说,在这部作品中,一个音乐片段首先通过两阶段聚类转换成一个模式串。在此基础上,采用类对齐算法计算两个音乐模式串之间的相似度。实验评估表明,我们提出的感知模式对听力很敏感,时间连续性有助于识别音乐作品之间的相似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Music Retrieval by Sequential Pattern-Based Alignment
Due to the rapid growth of music data, how to effectively and efficiently retrieve the interested music piece has been an attractive issue in recent years. In traditional music retrieval systems, the most popular way is to retrieve the music piece by matching query terms and music profiles like file name, artist and so on. However, this type of music retrieval systems suffers from problem of semantic gap. To aim at this problem, in this paper, we propose a new method named Pattern-Based Music Retrieval named PBMR that exploits temporal continuities of acoustical content to represent the musical features. That is, a music piece in this work is first converted into a pattern string by two-stage clustering. Thereupon the similarity between two music pattern strings is calculated by alignment-like algorithm. The experimental evaluations show that our proposed perceptual patterns are sensitive for listening and temporal continuities are helpful to identifying the similarities between music pieces.
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