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Enhancing downbeat detection when facing different music styles

机译:面对不同的音乐风格时,增强下调检测

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This paper focuses on the automatic rhythm analysis of musical audio at the bar level. We propose a novel approach for robust downbeat detection. It uses well-chosen complementary features, inspired by musical considerations. In particular, a note accentuation model and a detection of pattern changes are introduced. We estimate the time signature by examining the similarity of frames at the beat level. The features are selected through a linear SVM model or a weighted sum. The whole system is evaluated on five different datasets of various musical styles and shows improvement over the state of the art.
机译:本文侧重于小节级别的音乐音频自动节奏分析。我们提出了一种新的方法来进行健壮的下行检测。它采用了受音乐方面的启发而精心选择的互补功能。特别地,引入了音符重音模型和图案变化的检测。我们通过在拍子级别上检查帧的相似性来估计拍号。通过线性SVM模型或加权和选择特征。整个系统在各种音乐风格的五个不同数据集上进行评估,并显示出相对于现有技术的改进。

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