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首页> 外文期刊>EURASIP journal on advances in signal processing >Parametric time-frequency analysis and its applications in music classification
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Parametric time-frequency analysis and its applications in music classification

机译:参数时频分析及其在音乐分类中的应用

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摘要

Analysis of nonstationary signals, such as music signals, is a challenging task. The purpose of this study is to explore an efficient and powerful technique to analyze and classify music signals in higher frequency range (44.1kHz). The pursuit methods are good tools for this purpose, but they aimed at representing the signals rather than classifying them as in Y. Paragakin et al., 2009. Among the pursuit methods, matching pursuit (MP), an adaptive true nonstationary time-frequency signal analysis tool, is applied for music classification. First, MP decomposes the sample signals into time-frequency functions or atoms. Atom parameters are then analyzed and manipulated, and discriminant features are extracted from atom parameters. Besides the parameters obtained using MP, an additional feature, central energy, is also derived. Linear discriminant analysis and the leave-one-out method are used to evaluate the classification accuracy rate for different feature sets. The study is one of the very few works that analyze atoms statistically and extract discriminant features directly from the parameters. From our experiments, it is evident that the MP algorithm with the Gabor dictionary decomposes nonstationary signals, such as music signals, into atoms in which the parameters contain strong discriminant information sufficient for accurate and efficient signal classifications.
机译:对非平稳信号(例如音乐信号)的分析是一项艰巨的任务。这项研究的目的是探索一种有效且强大的技术来分析和分类较高频率范围(44.1kHz)中的音乐信号。追踪方法是达到此目的的良好工具,但它们的目的是表示信号,而不是按照Y. Paragakin等人(2009年)的方法进行分类。信号分析工具,用于音乐分类。首先,MP将采样信号分解为时频函数或原子。然后对原子参数进行分析和处理,并从原子参数中提取判别特征。除了使用MP获得的参数外,还导出了一个附加功能,即中心能量。线性判别分析和留一法用于评估不同特征集的分类准确率。这项研究是为数不多的统计分析原子并直接从参数中提取判别特征的工作之一。从我们的实验中可以明显看出,带有Gabor字典的MP算法将诸如音乐信号之类的非平稳信号分解为原子,在原子中参数包含足以进行准确有效的信号分类的强判别信息。

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