基于倒谱特征的频谱和主成分分析对印度古典乐器的分类

Sneha Gaikwad, A. Chitre, Y. Dandawate
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引用次数: 14

摘要

在音乐信息和数据库检索系统等应用中,乐器分类起着重要的作用。本文利用训练良好的反向传播神经网络分类器,提出了基于频谱和MFCC特征的印度古典乐器自动分类方法。乐器如Harmonium, Santo或Tabla被认为是一种实验。频谱特征如振幅和频谱范围以及Mel频率倒谱系数被认为是特征。由于无法区分特征,因此使用神经网络等非参数分类器进行分类。当倒谱系数较大时,采用主成分分析法选择重要系数。研究发现,使用42个样本进行训练,18个样本进行测试,反向传播神经网络的准确率达到98%。目前的工作可以扩展到更多的印度斯坦和北欧古典乐器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Indian Classical Instruments Using Spectral and Principal Component Analysis Based Cepstrum Features
In applications such as music information and database retrieval systems, classification of musical instruments plays an important role. The proposed work presents automatic classification of Indian Classical instruments based on spectral and MFCC features using well trained back propogation neural network classifier. Musical instruments such as Harmonium, Santo or and Tabla are considered for an experimentation. The spectral features such as amplitude and spectral range along with Mel Frequency Cepstrum Coefficients are considered as features. Being features are not distinguished, classification is done using non parametric classifiers such as neural networks. Being number of cepstrum coefficients are large important coefficients are selected using Principal Component Analysis. It has been observed that using 42 samples for training and 18 for testing, back propogation neural network provides accuracy of 98%. The present work can be extended for more number of Hindustani and Carnitic classical musical Instruments.
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