Alessio Degani, M. Dalai, R. Leonardi, P. Migliorati
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引用次数: 14
Abstract
In this paper, we propose a method to integrate the results of different cover song identification algorithms into one single measure which, on the average, gives better results than initial algorithms. The fusion of the different distance measures is made by projecting all the measures in a multi-dimensional space, where the dimensionality of this space is the number of the considered distances. In our experiments, we test two distance measures, namely the Dynamic Time Warping and the Qmax measure when applied in different combinations to two features, namely a Salience feature and a Harmonic Pitch Class Profile (HPCP). While the HPCP is meant to extract purely harmonic descriptions, in fact, the Salience allows to better discern melodic differences. It is shown that the combination of two or more distance measure improves the overall performance.