This study aims to create an automatic musical
instrument classifier by extracting audio features from
real sample sounds. These features are reduced using
Principal Component Analysis and the resultant data
is used to train a Multi-Layered Perceptron. We found
that the RMS temporal envelope and the evolution of
the centroid gave the most interesting results of the
features studied. These results were found to be
competitive whether the scope of the data was across
one octave or across the range of each instrument
History
Publication
2008 International Conference on Audio, Language and Image Processing pp. 643-648