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Autocorrelation of Pitch-Event Vectors in Meter Finding

机译:仪表发现中的俯仰活动向量自相关

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Computational researchers often use autocorrelation techniques to identify the meter of a musical passage, tracking the ebs and flows of loudness or -if using symbolic data- peaks and valleys of note attacks. This paper investigates the relative success of various harmonic and pitch events compared to a note-attack model when identifying musical meter using autocorrelation. This study implements such a process using several different parameters: note attacks, pitch class change, set class probabilities, and scale-degree set probabilities. These outputs are measured against a ground truth derived from each piece's notated time signature. The relative success of each parameter is tracked using F scores. While the study shows that loudness-oriented parameters are overall more successful, the paper discusses how its findings add to our understanding of musical meter and the role played by pitch parameters in metric accents.
机译:计算研究人员经常使用自相关技术来识别音乐段的仪表,跟踪EBS和响度的流量,或使用符号数据 - 峰值攻击的峰值和谷物。本文调查与使用自相关时识别音乐仪的音符攻击模型相比各种谐波和音调事件的相对成功。本研究实现了使用几个不同参数的这种进程:注意攻击,俯仰类更改,设置类概率和比例度集概率。这些输出是针对来自每个都是指出的时间签名的地面真理来衡量。使用F分数跟踪每个参数的相对成功。虽然该研究表明,响度导向的参数总体上更成功,但本文讨论了其调查结果如何增加我们对音乐仪表的理解,并且在公制口音中的音高参数发挥作用。

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