@article{MAKHILLRJAS201914810191, title = {A New Robust Resonance Based Wavelet Decomposition Cepstral Features for Phoneme Recoszgnition}, journal = {Research Journal of Applied Sciences}, volume = {14}, number = {8}, pages = {250-257}, year = {2019}, issn = {1815-932x}, doi = {rjasci.2019.250.257}, url = {https://makhillpublications.co/view-article.php?issn=1815-932x&doi=rjasci.2019.250.257}, author = {Ihsan,Abdlnaser and}, keywords = {phoneme classification,wavelet packet decomposition,speech features,ASR,Q-factor,TIMIT}, abstract = {Robust Automatic Speech Recognition (ASR) is a challenging task that has been an active research subject for the last 20 years. And still results are very modest in the highly noisy environments. In this study, we propose a new speech parameterization method based on concatenating two wavelet packet decompositions, one decomposition using low Q-factor wavelet and another with high Q-factor wavelet, to extract speech features suitable for ASR task in noisy conditions. Experiments on TIMIT dataset for phonemes recognition show that the proposed wavelet-based features outperform MFCC in all noisy conditions.} }