Efficient and portable content-based music retrieval system

Yen-Lin Chiang, Yuan-Shan Lee, Wen-Chi Hsieh, Jia-Ching Wang
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引用次数: 2

Abstract

In this work, a query-by-singing (QBS) content-based music retrieval (CBMR) system is proposed. The proposed QBS-CBMR system shows high efficiency and portability. The proposed QBS-CBMR system uses a music clip as a search key. First, a 13 dimensional Mel-frequency cepstral coefficients (MFCCs) is extracted from an input music clip. Second, each dimension of MFCCs is transformed into a symbolic sequence using the adapted symbolic aggregate approximation (adapted SAX). Each symbolic sequence corresponding to each dimension of MFCCs is then converted into a tree structure called advanced fast pattern index (AFPI) tree. In order to evaluate the similarity between the query music clip and the songs in the database, a partial score is calculated for each AFPI tree first. The final score is obtained by the weighted summation of all partial scores, where the weighting of each partial score is determined by its entropy. The experimental results show that the proposed music retrieval system outperforms other approaches.
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高效、便携的基于内容的音乐检索系统
本文提出了一种基于歌曲查询(QBS)的基于内容的音乐检索(CBMR)系统。所提出的QBS-CBMR系统具有高效率和可移植性。提出的QBS-CBMR系统使用音乐片段作为搜索键。首先,从输入音乐片段中提取13维mel频率倒谱系数(MFCCs)。其次,使用自适应符号聚合近似(自适应SAX)将mfccc的每个维度转换为符号序列。每个符号序列对应于mfccc的每个维度,然后转换成一个称为高级快速模式索引(AFPI)树的树结构。为了评估查询音乐片段与数据库中歌曲之间的相似性,首先为每个AFPI树计算部分分数。最终分数由所有部分分数的加权和得到,其中每个部分分数的权重由其熵决定。实验结果表明,所提出的音乐检索系统优于其他方法。
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