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Does k Matter? k-NN Hubness Analysis for Kernel Additive Modelling Vocal Separation

机译:k重要吗? k-NN中心度分析用于内核加性建模人声分离

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Kernel Additive Modelling (KAM) is a framework for source separation aiming to explicitly model inherent properties of sound sources to help with their identification and separation. KAM separates a given source by applying robust statistics on the selection of time-frequency bins obtained through a source-specific kernel, typically the k-NN function. Even though the parameter k appears to be key for a successful separation, little discussion on its influence or optimisation can be found in the literature. Here we propose a novel method, based on graph theory statistics, to automatically optimise k in a vocal separation task. We introduce the k-NN hubness as an indicator to find a tailored k at a low computational cost. Subsequently, we evaluate our method in comparison to the common approach to choose k. We further discuss the influence and importance of this parameter with illuminating results.
机译:内核加性建模(KAM)是源分离的框架,旨在显式建模声源的固有属性,以帮助其识别和分离。 KAM通过对通过特定于源的内核(通常是k-NN函数)获得的时频点的选择应用可靠的统计信息,来分离给定源。尽管参数k似乎是成功分离的关键,但在文献中几乎找不到关于其影响或优化的讨论。在这里,我们提出了一种基于图论统计的新颖方法,可以在语音分离任务中自动优化k。我们引入k-NN中心度作为指标,以较低的计算成本找到量身定制的k。随后,与选择k的通用方法相比,我们评估了我们的方法。我们通过照明结果进一步讨论了该参数的影响和重要性。

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