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Statistical Analysis of Musical Sound Features Derived from Wavelet Representation

机译:小波表示源自小波表示的音乐功能统计分析

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The presented study is aimed to extract parameters from musical sounds that can be useful in the musical sound recognition process. For this purpose time-frequency transform analysis employing various filters is performed on musical sounds representing twelve instrument classes. Three groups of instruments are taken into account, Examples of wavelet analyses of various musical instrument sounds are presented. On this basis a number of parameters was extracted and statistically analyzed. Parameters that are correlated are removed from the feature vector. In this way a number of parameters in the feature vector can be diminished from dozens to a few most important ones. Then feature vectors were fed to the Artificial Neural Network inputs and classification experiments were performed. Furthermore originally developed Frequency Envelope Distribution method was applied to divide musical signal into harmonic and inharmonic content. Those signals were also parameterized and used in recognition experiments. Some experiment results are presented. The derived conclusions are also included in the paper.
机译:所提出的研究旨在从音乐声音识别过程中有用的音乐声音中提取参数。为此目的时频率变换分析,采用各种滤波器进行代表十二仪器类的音乐声音执行。考虑了三组仪器,提出了各种乐器声音的小波分析的例子。在此基础上,提取了许多参数和统计分析。从特征向量中删除相关的参数。以这种方式,特征向量中的许多参数可以从数十个到几个最重要的参数。然后将特征向量馈送到人工神经网络输入,并进行分类实验。此外,最初发育的频率包络分布方法被应用于将音乐信号分成谐波和单谐型含量。这些信号也参数化并用于识别实验。提出了一些实验结果。衍生的结论也包括在论文中。

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