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Classification of musical patterns using variable duration hidden Markov models

机译:使用可变持续时间隐马尔可夫模型对音乐模式进行分类

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This paper presents a new extension to the variable duration hidden Markov model (HMM), capable of classifying musical pattens that have been extracted from raw audio data into a set of predefined classes. Each musical pattern is converted into a sequence of music intervals by means of a fundamental frequency tracking procedure. This sequence is subsequently presented as input to a set of variable-duration HMMs. Each one of these models has been trained to recognize patterns of a corresponding predefined class. Classification is determined based on the highest recognition probability. The new type of variable-duration hidden Markov modeling proposed in this paper results in enhanced performance because 1) it deals effectively with errors that commonly originate during the feature extraction stage, and 2) it accounts for variations due to the individual expressive performance of different instrument players. To demonstrate its effectiveness, the novel classification scheme has been employed in the context of Greek traditional music, to monophonic musical patterns of a popular instrument, the Greek traditional clarinet. Although the method is also appropriate for western-style music, Greek traditional music poses extra difficulties and makes music pattern recognition a harder task. The classification results demonstrate that the new approach outperforms previous work based on conventional HMMs.
机译:本文提出了可变持续时间隐马尔可夫模型(HMM)的新扩展,该模型能够将已从原始音频数据中提取的音乐模式分类为一组预定义的类。借助于基本的频率跟踪程序,将每种音乐模式转换为一系列音乐间隔。随后将该序列作为一组可变持续时间HMM的输入。这些模型中的每个模型都经过训练,可以识别相应预定义类别的模式。基于最高识别概率确定分类。本文提出的新型可变持续时间隐马尔可夫建模可提高性能,因为1)有效地处理了特征提取阶段常见的错误; 2)考虑了不同表现形式下个体的表现差异。乐器演奏者。为了证明其有效性,在希腊传统音乐的背景下,采用了新颖的分类方案,将其作为一种流行乐器希腊传统单簧管的单音模式。尽管该方法也适用于西式音乐,但是希腊传统音乐带来了额外的困难,使音乐模式识别变得困难。分类结果表明,新方法优于基于传统HMM的先前工作。

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