首页> 外文会议>International Symposium on Computer Music Modeling and Retrieval(CMMR 2003); 20030526-20030527; Montpellier; FR >Deriving Musical Structures from Signal Analysis for Music Audio Summary Generation: 'Sequence' and 'State' Approach
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Deriving Musical Structures from Signal Analysis for Music Audio Summary Generation: 'Sequence' and 'State' Approach

机译:从信号分析中导出音乐结构,以生成音乐音频摘要:“序列”和“状态”方法

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摘要

In this paper, we investigate the derivation of musical structures directly from signal analysis with the aim of generating visual and audio summaries. Prom the audio signal, we first derive features - static features (MFCC, chromagram) or proposed dynamic features. Two approaches are then studied in order to derive automatically the structure of a piece of music. The sequence approach considers the audio signal as a repetition of sequences of events. Sequences are derived from the similarity matrix of the features by a proposed algorithm based on a 2D structuring filter and pattern matching. The state approach considers the audio signal as a succession of states. Since human segmentation and grouping performs better upon subsequent hearings, this natural approach is followed here using a proposed multi-pass approach combining time segmentation and unsupervised learning methods. Both sequence and state representations are used for the creation of an audio summary using various techniques.
机译:在本文中,我们直接从信号分析中研究音乐结构的派生,目的是生成视觉和音频摘要。提示音频信号时,我们首先导出特征-静态特征(MFCC,色谱图)或提议的动态特征。然后研究了两种方法,以便自动得出音乐的结构。序列方法将音频信号视为事件序列的重复。通过基于二维结构化滤波器和模式匹配的拟议算法,从特征的相似性矩阵中得出序列。状态方法将音频信号视为一系列状态。由于人的分段和分组在随后的听证会上表现更好,因此在此自然方法是使用结合了时间分段和无监督学习方法的提议的多遍方法进行的。序列和状态表示均用于使用各种技术创建音频摘要。

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