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Simultaneous Beat and Downbeat-Tracking Using a Probabilistic Framework: Theory and Large-Scale Evaluation

机译:使用概率框架同时进行心跳和心跳跟踪:理论和大规模评估

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This paper deals with the simultaneous estimation of beat and downbeat location in an audio-file. We propose a probabilistic framework in which the time of the beats and their associated beat-position-inside-a-bar roles; hence, the downbeats, are considered as hidden states and are estimated simultaneously using signal observations. For this, we propose a “reverse” Viterbi algorithm which decodes hidden states over beat-numbers. A beat-template is used to derive the beat observation probabilities. For this task, we propose the use of a machine-learning method, the Linear Discriminant Analysis, to estimate the most discriminative beat-templates. We propose two functions to derive the beat-position-inside-a-bar observation probability: the variation over time of chroma vectors and the spectral balance. We then perform a large-scale evaluation of beat and downbeat-tracking using six test-sets. In this, we study the influence of the various parameters of our method, compare this method to our previous beat and downbeat-tracking algorithms, and compare our results to state-of-the-art results on two test-sets for which results have been published. We finally discuss the results obtained by our system in the MIREX-09 and MIREX-10 contests for which our system ranked among the first for the “McKinney Collection” test-set.
机译:本文涉及音频文件中拍子和拍子位置的同时估计。我们提出一个概率框架,其中节拍的时间及其相关的节拍位置在酒吧内部的角色;因此,脉动被认为是隐藏状态,并使用信号观测同时进行估计。为此,我们提出了一种“反向”维特比算法,该算法可对拍数上的隐藏状态进行解码。节拍模板用于导出节拍观察概率。对于此任务,我们建议使用机器学习方法(线性判别分析)来估计最具判别力的节拍模板。我们提出了两个函数来导出拍子位置在小节中的观察概率:色度矢量随时间的变化和频谱平衡。然后,我们使用六个测试集对节拍和下拍跟踪进行大规模评估。在本文中,我们研究了该方法的各个参数的影响,将该方法与之前的拍频和拍频跟踪算法进行了比较,并将我们的结果与两个测试集上的最新结果进行了比较,已出版。最后,我们讨论了我们的系统在MIREX-09和MIREX-10竞赛中获得的结果,我们的系统在“ McKinney Collection”测试仪中位居第一。

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