Instrument Identification in Monophonic Music Using Spectral Information

Giza(2007)

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摘要
Various kinds of feature sets have been proposed to represent characteristics of musical instruments. While those feature sets have been chosen in a rather heuristic way, in this study, we demonstrate that the log-power spectrum suffices to represent characteristics that are essential to identifying instruments. For efficient encoding of instrument characteristics, we then reduce the number of features by applying the well-known dimension reduction techniques: principal component analysis (PCA) and linear discriminant analysis (LDA). For the classification of eight instruments, the features obtained by applying PCA-LDA to the log-power spectrum performed very well in comparison to existing methods with a recognition rate of 91% with as few as ten features.
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关键词
feature extraction,musical instruments,principal component analysis,speech processing,dimension reduction,instrument identification,instruments classification,linear discriminant analysis,log-power spectrum,monophonic music,spectral information,acoustic filters,data compression,linear systems,pattern recognition,power spectrum,linear system
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