PEMODELAN PROBABILISTIK NEURAL NETWORK UNTUK KONVERSI SUARA GITAR KE CORD
Abstract
Almost allmusic genreuse guitaras its instrument. Toproducea harmonicguitarvoice
needs guitar chords mastery. However. only few peopleareable todistinguish guitar
chords. This paper is addressed 10 develop a computational model la convert guitar
voice into appropriate cord. In this research. we use Mei Frequency Cepstrum
Coefficient (MFCC) as feature extraction because thistechniqueis oftenusedfor voice
processing and good enough in presenting thecharacteristics ofasignal voice.
Probabilistic Neural Network (PNN) is implemented to classify the [eature into one out
of 24 class es of cord. We record 345 for each card (totally we have 8640 recording
data with WAV format). Experimenst are conducted for same number of cepstral
coefficients (/3. l6. 39 and 5l). with 100 millisecond as time Fame and 40%
overlapping betwecn successive Fame. According to the experiment, the maximum
accuracy is Y4.31%j(}r 52 number ofcepstral coefficients.
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