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Wavelet-packets Associated with Support Vector Machine Are Effective for Monophone Sorting in Music Signals

机译:与支持向量机相关联的小波包对音乐信号中的唯一排序是有效的

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摘要

An abstract interpretation is usually required to analyze acoustic compositions. Nevertheless, there is much signal processing-related research focusing on music processing and similar topics. In that context, the semantic information contained in the melody involving major and minor chords, sharps and flats associated with semibreve, minim, crotchet, quaver, semiquaver and demisemiquaver notes can help in the study of musical sounds. Thus, multiresolution analysis based on discrete wavelet-packet transform (DWPT) associated with a support vector machine (SVM) is used in this paper to inspect and classify those signals, correlating them with a respective acoustic pattern. Results over hundreds of inputs provided almost full accuracy, reassuring the efficacy of the proposed approach for both off-line and real-time usage.
机译:通常需要抽象解释来分析声学组合物。 然而,有很多信号处理相关的研究,重点是音乐处理和类似主题。 在这种情况下,涉及与半导体,最小,克罗照,兽语,半分析和DemiseMaiSeMaiSemaver的血液和次要和弦,尖锐和公寓的旋律中包含的语义信息可以帮助研究音乐声音的研究。 因此,在本文中使用基于与支持向量机(SVM)相关联的离散小波分组变换(DWPT)的多分辨率分析以检查和分类这些信号,将它们与各个声学图案相关联。 结果数百种输入提供了几乎完全的准确性,放心了拟议方法对离线和实时使用的功效。

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