There are different algorithms for vocal fold pathology diagnosis. These
algorithms usually have three stages which are Feature Extraction, Feature
Reduction and Classification. While the third stage implies a choice of a
variety of machine learning methods, the first and second stages play a
critical role in performance and accuracy of the classification system. In this
paper we present initial study of feature extraction and feature reduction in
the task of vocal fold pathology diagnosis. A new type of feature vector, based
on wavelet packet decomposition and Mel-Frequency-Cepstral-Coefficients
(MFCCs), is proposed. Also Principal Component Analysis (PCA) is used for
feature reduction. An Artificial Neural Network is used as a classifier for
evaluating the performance of our proposed method.Comment: 4 pages, 3 figures, Published with International Journal of Computer
Applications (IJCA