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Evaluation of Onset Detection Algorithms in Popular Polyphonic Music on a Large Scale Database

机译:大规模数据库中流行和弦音乐中的起步检测算法评估

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This paper introduces a large database of popular polyphonic music containing drums (10.238 onsets) for the evaluation of onset detection algorithms. The database has been manually annotated by expert listeners. The inter-rater variability leads to an understanding of inter-human variations. Four common detection functions are investigated: spectral difference, high frequency content, phase deviation and the psychoacoustie one of Klapuri. We present an additional detection function based on the mpeg7 feature audio spectrum envelope. An adaptive peak picker determines the onsets which are compared with the manual labels. Results show that detection functions based on spectral difference obtain observable better results. The study provides a thorough investigation of onset detection algorithms in popular polyphonic music.
机译:本文介绍了一个包含鼓(10.238起)的流行复音音乐的大型数据库,用于评估起病检测算法。该数据库已由专家侦听器手动注释。评估者之间的变异性导致人们对人类之间变异的理解。研究了四种常见的检测功能:频谱差异,高频含量,相位偏移和克拉普里的心理声学特性之一。我们提出了基于mpeg7功能音频频谱包络的​​附加检测功能。自适应峰选择器确定与手动标签进行比较的起始点。结果表明,基于光谱差异的检测功能可获得较好的观察结果。该研究对流行的复调音乐中的起步检测算法进行了深入研究。

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