Probabilistic framework for template-based chord recognition

L. Oudre, C. Févotte, Y. Grenier
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引用次数: 5

Abstract

This paper describes a method for chord recognition from audio signals. Our method provides a coherent and relevant probabilistic framework for template-based transcription. The only information needed for the transcription is the definition of the chords : in particular neither annotated audio data nor music theory knowledge is required. We extract from the signal a succession of chroma vectors which are our model observations. We propose a generative model for these observations from chord distribution probabilities and fixed chord templates. The parameters are evaluated through an EM algorithm. In order to capture the temporal structure, we apply some post-processing filtering methods before detecting the chords. Our method is evaluated on two audio corpus. Results show that our method outperforms state-of-the-art chord recognition methods and also gives more relevant chord transcriptions.
基于模板的和弦识别的概率框架
本文介绍了一种从音频信号中识别和弦的方法。我们的方法为基于模板的转录提供了一个连贯和相关的概率框架。转录所需的唯一信息是和弦的定义:特别是既不需要注释音频数据也不需要音乐理论知识。我们从信号中提取一系列色度向量,这些色度向量是我们的模型观测值。我们提出了一个基于弦分布概率和固定弦模板的生成模型。通过EM算法对参数进行评估。为了捕获时间结构,我们在检测和弦之前应用了一些后处理滤波方法。我们的方法在两个音频语料库上进行了评估。结果表明,我们的方法优于最先进的和弦识别方法,并且还提供了更多相关的和弦转录。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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