Multi-label automatic indexing of music by cascade classifiers

Wenxin Jiang, Z. Ras
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引用次数: 5

Abstract

Recently, numerous successful approaches have been developed for instrument recognition in monophonic sounds. Unfortunately, none of them can be successfully applied to polyphonic sounds. Identification of music instruments in polyphonic sounds is still difficult and challenging. This has stimulated a number of research projects on music sound separation, new features development, and more recently on hierarchically structured classifiers used in content-based music recommender systems. This paper introduces a hierarchically structured cascade classification system to estimate multiple timbre information from the polyphonic sound by classification which is based on acoustic features and short-term power spectrum matching. This cascade system makes a first estimate on the higher level decision attribute which stands for the musical instrument family. Then, the further estimation is done within that specific family range. Experiments showed better performance of a hierarchical system than the traditional flat classification method which directly estimates the instrument without higher level of family information analysis. Traditional hierarchical structures were constructed in human semantics, which are meaningful from human perspective but not appropriate for a cascade system. We introduce a new hierarchical instrument schema according to the clustering results of the acoustic features. This new schema better describes the similarity among different instruments or among different playing techniques of the same instrument. The classification results show the higher accuracy of cascade system with the new schema compared to the traditional schemas.
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多标签自动索引的音乐级联分类器
近年来,许多成功的方法被开发出来用于单音乐器的识别。不幸的是,它们都不能成功地应用于复调音。识别乐器的复调音仍然是困难和具有挑战性的。这刺激了许多关于音乐声音分离的研究项目,新功能的开发,以及最近在基于内容的音乐推荐系统中使用的层次结构分类器。本文介绍了一种基于声学特征和短时功率谱匹配的分层级联分类系统,通过分类来估计复调音中的多个音色信息。该级联系统对代表乐器族的高级决策属性进行了第一次估计。然后,在特定的家庭范围内进行进一步的估计。实验结果表明,该分级系统比传统的平面分类方法具有更好的性能,而传统的平面分类方法直接对仪器进行估计,不需要进行更高水平的家庭信息分析。传统的层次结构是用人的语义构造的,从人的角度看是有意义的,但不适用于级联系统。根据声学特征的聚类结果,提出了一种新的分层乐器模式。这种新的图式更好地描述了不同乐器之间或同一乐器的不同演奏技巧之间的相似性。结果表明,与传统模式相比,新模式对级联系统的分类精度更高。
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