A Comparison of Backpropagation and LVQ : a case study of lung sound recognition
Date
2014-10Author
Syafria', Fadhilah
Buono, Agus
Silalahi, Bib Paruhum
Metadata
Show full item recordAbstract
One way to evaluate the state of the
lungs is by listening to breath sounds using
stethoscope. This technique is known as auscultation.
This technique is fairly simple and inexpensive, but it
has sorne disadvantage. They are the results of
subjective analysis. human hearing is less sensitive to
low frequency, em ironmental noise and panern of
lung sounds that alrnost similar. Because of these
factors. misdiagnosis can occur if procedure of
auscultation is not done properly. In this research, will
be made a model of lung sound recognition with
neural network approach. Arti ficial neural network
method used is Backpropagation (BP) and learning
Vector Quantization (L VQ). Comparison of these two
methods performed to determine and recommend
algorithms which provide better recognition accuracy
of speech recognition in the case of lung sounds. In
addition to the above two methods. the method of Mei
Frequency Cepstrum Coefficient (MFCC) is also used
as method of feature extraction. The results show the
accuracy of using Backpropagation is 93.17%, while
the value of using the LVQ is R6.R8%. It can be
concluded that the introduction of lung sounds using
Backpropagation method gives better perfonnance
compared to the LVQ method for speech recognition
cases of lung sounds.
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