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Section-level modeling of musical audio for linking performances to scores in Turkish makam music

机译:用于将性能联系到土耳其古玩地区数量的音频级模型

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Section linking aims at relating structural units in the notation of a piece of music to their occurrences in a performance of the piece. In this paper, we address this task by presenting a score-informed hierarchical Hidden Markov Model (HHMM) for modeling musical audio signals on the temporal level of sections present in a composition, where the main idea is to explicitly model the long range and hierarchical structure of music signals. So far, approaches based on HHMM or similar methods were mainly developed for a note-to-note alignment, i.e. an alignment based on shorter temporal units than sections. Such approaches, however, are conceptually problematic when the performances differ substantially from the reference score due to interpretation and improvisation, a very common phenomenon, for instance, in Turkish makam music. In addition to having low computational complexity compared to note-to-note alignment and achieving a transparent and elegant model, the experimental results show that our method outperforms a previously presented approach on a Turkish makam music corpus.
机译:章节联系旨在将结构单元联系在一段音乐的符号中,以便在该件的性能方面发生。在本文中,我们通过呈现一个可通知的分层隐藏的Markov模型(HHMM)来解决该任务,用于在构图中存在的部分的时间级别建模音频信号,其中主要思想是明确地模拟长距离和分层音乐信号的结构。到目前为止,主要开发了基于HHMM或类似方法的方法,即用于注意音符对齐,即,基于较短的时间单元的对齐而不是部分。然而,这种方法在概念上是有问题的,当表演在由于解释和即兴引起的参考分数大大不同,例如在土耳其旺姆音乐中非常常见的现象。除了计算复杂性低与音符对准和实现透明和优雅的模型相比,实验结果表明,我们的方法在土耳其马卡姆音乐语料库上表现出先前提出的方法。

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