Speech recognition has many applications in various fields. One of the most important phase in speech recognition is feature extraction. In feature extraction relevant important information from the speech signal are extracted. However, two important issues that affect feature extraction are noise robustness and high feature dimension. Existing feature extraction which uses fixed windows processing and spectral analysis methods like Mel-Frequency Cepstral Coefficient (MFCC) could not cater robustness and high feature dimension problems. This research proposes the usage of Discrete Wavelet Transform (DWT) to replace Discrete Fourier Transform (DFT) for calculating the cepstrum coefficients to produce a newly proposed Wavelet Cepstral Coeffic...
Speech recognition is an emerging research area having its focus on human computer interactions (HCI...
This study investigates the usefulness of wavelet transforms in phoneme recognition. Both discrete w...
We develop noise robust features using Gammatone wavelets derived from the popular Gammatone functio...
Speech recognition has many applications in various fields. One of the most important phase in speec...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
AbstractOne of the most widely used approaches for feature extraction in speaker recognition is the ...
AbstractAn important step in speaker recognition is extracting features from raw speech that capture...
in this paper, we introduced a text-depend speaker recognition by using wavelet transform under stre...
In this thesis, new wavelet-based techniques have been developed for the extraction of features from...
Combining Mel Frequency Cepstral Coefficient with wavelet transform for feature extraction is not ne...
Automatic Speech Recognition (ASR) is a challenging task and the most problematic issues being in pr...
To improve the performance of phoneme based Automatic Speech Recognition (ASR) in noisy environment;...
The speech signal within a sub-band varies at a fine level depending on the type, and level of dysar...
Speech recognition is an emerging research area having its focus on human computer interactions (HCI...
This study investigates the usefulness of wavelet transforms in phoneme recognition. Both discrete w...
We develop noise robust features using Gammatone wavelets derived from the popular Gammatone functio...
Speech recognition has many applications in various fields. One of the most important phase in speec...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
The study proposes an improved feature extraction method that is called Wavelet Cepstral Coefficient...
AbstractOne of the most widely used approaches for feature extraction in speaker recognition is the ...
AbstractAn important step in speaker recognition is extracting features from raw speech that capture...
in this paper, we introduced a text-depend speaker recognition by using wavelet transform under stre...
In this thesis, new wavelet-based techniques have been developed for the extraction of features from...
Combining Mel Frequency Cepstral Coefficient with wavelet transform for feature extraction is not ne...
Automatic Speech Recognition (ASR) is a challenging task and the most problematic issues being in pr...
To improve the performance of phoneme based Automatic Speech Recognition (ASR) in noisy environment;...
The speech signal within a sub-band varies at a fine level depending on the type, and level of dysar...
Speech recognition is an emerging research area having its focus on human computer interactions (HCI...
This study investigates the usefulness of wavelet transforms in phoneme recognition. Both discrete w...
We develop noise robust features using Gammatone wavelets derived from the popular Gammatone functio...