Better beat tracking through robust onset aggregation

Brian McFee, D. Ellis
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引用次数: 14

Abstract

Onset detection forms the critical first stage of most beat tracking algorithms. While common spectral-difference onset detectors can work well in genres with clear rhythmic structure, they can be sensitive to loud, asynchronous events (e.g., off-beat notes in a jazz solo), which limits their general efficacy. In this paper, we investigate methods to improve the robustness of onset detection for beat tracking. Experimental results indicate that simple modifications to onset detection can produce large improvements in beat tracking accuracy.
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通过鲁棒起始聚合实现更好的心跳跟踪
起始检测是大多数节拍跟踪算法的关键第一阶段。虽然普通的光谱差异开始检测器可以在具有清晰节奏结构的类型中工作得很好,但它们可能对大声的,异步的事件(例如,爵士独奏中的非节拍音符)敏感,这限制了它们的一般效力。在本文中,我们研究了提高起始检测的鲁棒性的方法。实验结果表明,对起跳检测进行简单的修改可以大大提高拍频跟踪的精度。
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