HMM/GMM Classification for Articulation Disorder Correction Among Algerian Children
Abed Ahcène1, 2 and Guerti Mhania1
1Laboratoire Signal et Communications, Ecole Nationale Polytechnique, Algeria
2Scientific and Technical Research Center for the Development of the Arabic Language, Algeria
Abstract: In this paper, we propose an automatic classification for Arabic phonemic substitution using an Hidden Markov Model/Gaussian Mixture Model (HMM/GMM) systems. The main objective is to help Algerian children in the correction of articulation problems. Five cases are analyzed in the experiments, 20 Arabic words are recorded by a 20 Algerian children, with age range between 4 and 6 years old. Signals are recorded and stored as wave format with 16kHz as sampling rate, 12 Mel Frequency Cepstral Coefficients (MFCC), with their first and second derivates, respectively Δ and ΔΔ are extracted from each signal and used to the training and recognition phases. The proposed system achieved its best accuracy recognition 85.73%, with 5-stats HMM when the output function is modelled by a GMM with 8 gaussian components.
Keywords: Phonemic substitution, HMM/GMM, algerian dialectal, speech recognition, MFCC.
Received August 29, 2014; accepted October 26, 2014