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A Learning-Based Quantization: Estimation of Onset Times in a Musical Score

机译:基于学习的量化:乐谱中起病时间的估计

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摘要

This paper describes a method for organizing onset times of musical notes performed along a jam-session accompaniment into the normalized (quantized) positions in a score. The purpose of this study is to align onset times of a session recording to quantized positions so the performance data can be stored in a reusable form. Unlike most previous beat-tracking-related methods focusing on predicting or estimating beat positions, our method deals with the problem of eliminating the onset-time deviations under the condition that the beat positions are given. To quantize polyphonic MIDI recordings of jam session, we propose a method that uses hidden Markov models for modeling onset-time transition and deviation. Its main advantage is that a player's performance is quantized using a model learned statistically from session recordings of that player. Experimental results show that our model performs better than the semi-automatic quantization in commercial sequencing software.
机译:本文介绍了一种方法,用于将沿果酱演奏伴奏执行的音符的开始时间组织到乐谱中的标准化(量化)位置。这项研究的目的是使会话记录的开始时间与量化位置保持一致,以便可以以可重复使用的形式存储性能数据。与大多数以前的与节拍跟踪相关的方法着重于预测或估计节拍位置不同,我们的方法处理的问题是在给出节拍位置的情况下消除开始时间偏差。为了量化果酱会话的和弦MIDI录音,我们提出了一种使用隐马尔可夫模型对开始时间过渡和偏离进行建模的方法。它的主要优点是使用从该球员的会话记录中统计学习的模型来量化球员的表现。实验结果表明,我们的模型比商业测序软件中的半自动量化性能更好。

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