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Optimized phase-space reconstruction for accurate musical-instrument signal classification

机译:优化的相空间重构,可实现准确的乐器信号分类

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摘要

Traditional musical-instrument classification methods mainly use regions in the time or/and frequency characteristics, cepstrum characteristics, and MPEG-7 characteristics, and they often lead to erroneous classification. Therefore, there is need to develop a more suitable method that is more applicable to the nonlinear characteristics of musical-instrument signals and can avoid the abovementioned problems. In this paper, a musical-instrument classification method that couples the optimized phase-space reconstruction (OPSR) with a flexible neural tree (FNT) is proposed. As per nonlinear dynamic theory, a principal component analysis and correlation coefficient are used to optimize the phase-space reconstruction (PSR) method. Multidimensional PSR results for different musical-instrument signals are extracted as the main components, and the dimensionality is reduced by the OPSR method. A probability density function (PDF) is introduced in the feature extraction step to differentiate musical instruments according to the phase-space-reconstructible characteristics. A FNT is adopted as a classifier to tackle the variability in musical-instrument signals and to improve the adaptive ability of various target classification problems. Experimental testing has been conducted to show that the proposed OPSR-PDF-FNT algorithm gives superior performance over other comparable algorithms and can classify 12 musical instruments with an accuracy of 98.2 %.
机译:传统的乐器分类方法主要在时间或/和频率特性,倒谱特性和MPEG-7特性中使用区域,并且它们经常导致错误的分类。因此,需要开发一种更适用于乐器信号的非线性特性并且可以避免上述问题的更合适的方法。本文提出了一种将优化的相空间重构(OPSR)与柔性神经树(FNT)结合起来的音乐乐器分类方法。根据非线性动力学理论,使用主成分分析和相关系数来优化相空间重构(PSR)方法。提取不同乐器信号的多维PSR结果作为主要成分,并通过OPSR方法降低维数。在特征提取步骤中引入了概率密度函数(PDF),以根据相空间可重构特征区分乐器。 FNT被用作分类器,以解决乐器信号中的可变性并提高各种目标分类问题的自适应能力。进行的实验测试表明,所提出的OPSR-PDF-FNT算法具有优于其他同类算法的性能,并且能够以98.2%的精度对12种乐器进行分类。

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