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Instrument recognition in polyphonic music based on automatic taxonomies

机译:基于自动分类法的和弦音乐中的乐器识别

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摘要

We propose a new approach to instrument recognition in the context of real music orchestrations ranging from solos to quartets. The strength of our approach is that it does not require prior musical source separation. Thanks to a hierarchical clustering algorithm exploiting robust probabilistic distances, we obtain a taxonomy of musical ensembles which is used to efficiently classify possible combinations of instruments played simultaneously. Moreover, a wide set of acoustic features is studied including some new proposals. In particular, signal to mask ratios are found to be useful features for audio classification. This study focuses on a single music genre (i.e., jazz) but combines a variety of instruments among which are percussion and singing voice. Using a varied database of sound excerpts from commercial recordings, we show that the segmentation of music with respect to the instruments played can be achieved with an average accuracy of 53%.
机译:我们提出了从独奏到四重奏的真实音乐编排中乐器识别的新方法。我们的方法的优势在于它不需要事先分离音乐源。多亏了利用鲁棒概率距离的分层聚类算法,我们获得了音乐合奏的分类法,该分类法用于有效地分类同时演奏的乐器的可能组合。此外,还研究了一系列声学特征,包括一些新建议。特别地,发现信噪比是音频分类的有用特征。这项研究的重点是单一音乐流派(即爵士乐),但结合了打击乐器和歌声等多种乐器。使用来自商业录音的声音摘录的各种数据库,我们表明,相对于所演奏的乐器,音乐的分割可以达到平均53%的准确度。

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