Music and timbre segmentation by recursive constrained K-means clustering

被引:0
作者
Sebastian Krey
Uwe Ligges
Friedrich Leisch
机构
[1] Technische Universität Dortmund,Fakultät Statistik
[2] Universität für Bodenkultur Wien,Institut für angewandte Statistik und EDV
来源
Computational Statistics | 2014年 / 29卷
关键词
Clustering; Constraint; Music; Classification;
D O I
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中图分类号
学科分类号
摘要
Clustering of features generated of musical sound recordings proved to be beneficial for further classification tasks such as instrument recognition (Ligges and Krey in Comput Stat 26(2):279–291, 2011). We propose to use order constrained solutions in K-means clustering to stabilize the results and improve the interpretability of the clustering. With this method a further improvement of the misclassification error in the aforementioned instrument recognition task is possible. Using order constrained K-means the musical structure of a whole piece of popular music can be extracted automatically. Visualizing the distances of the feature vectors through a self distance matrix allows for an easy visual verification of the result. For the estimation of the right number of clusters, we propose to calculate the adjusted Rand indices of bootstrap samples of the data and base the decision on the minimum of a robust version of the coefficient of variation. In addition to the average stability (measured through the adjusted Rand index) this approach takes the variation between the different bootstrap samples into account.
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页码:37 / 50
页数:13
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