This paper examines the use of Mel-frequency
Cepstral Coefficients in the classification of musical
instruments. 2004 piano, violin and flute samples are
analysed to get their coefficients. These coefficients
are reduced using principal component analysis and
used to train a multi-layered perceptron. The network
is trained on the first 3, 4 and 5 principal components
calculated from the envelope of the changes in the
coefficients. This trained network is then used to
classify novel input samples. By training and testing
the network on a different number of coefficients, the
optimum number of coefficients to include for
identifying a musical instrument is determined. We
conclude that using 4 principal components from the
first 15 coefficients gives the most accurate
classification results.