符号音乐模式的实时检测:概率与确定性方法

Nishal Silva, C. Fischione, L. Turchet
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引用次数: 1

摘要

音乐模式的计算检测在音乐信息检索领域得到了广泛的研究,有着广泛的应用。然而,实时模式检测还没有得到足够的重视。实时检测在许多应用领域都很重要,尤其是在音乐物联网领域。本研究考虑了一种单一的乐器,并研究了单音音乐流模式的实时检测。我们提出了一种表示机制,将音符表示为单列矩阵,其内容对应于每个音符的三个关键属性-音高,振幅和持续时间。音符属性是从MIDI符号表示中获得的。基于这种表示,我们比较了基于神经网络和一种确定性方法的最突出的候选方法。数值结果显示了每种方法的准确性,并允许我们描述这些方法之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Real-Time Detection of Symbolic Musical Patterns: Probabilistic vs. Deterministic Methods
The computational detection of musical patterns is widely studied in the field of Music Information Retrieval and has numerous applications. However, pattern detection in real-time has not yet received adequate attention. The real-time detection is important in several application domains, especially in the field of the Internet of Musical Things. This study considers a single musical instrument and investigates the detection in real-time of patterns of a monophonic music stream. We present a representation mechanism to denote musical notes as a single column matrix, whose content corresponds to three key attributes of each musical note-pitch, amplitude and duration. The note attributes are obtained from a symbolic MIDI representation. Based on such representation, we compare the most prominent candidate methods based on neural networks and one deterministic method. Numerical results show the accuracy of each method, and allow us to characterize the trade-offs among those methods.
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