Spectral feature computations continue to be a very difficult problem for accurate machine recognition of vowels especially in the presence of noise or for otherwise degraded acoustic signals. In this work, a new peak envelope method for vowel classification is developed, based on a missing frequency components model of speech recognition. According to this model, vowel recognition depends only on the location of spectral peaks. Also, smoothing and interpolation of the sampled spectra, performed in the cepstral analysis method commonly used in automatic speech recognition results in a loss of valuable information. The new method for feature extraction presented in this paper is based on minimum mean square error curve fitting of cosine-like...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
Automatic speech recognition (ASR) has made great strides with the development of digital signal pro...
Automatic speech recognition (ASR) has made great strides with the development of digital signal pro...
We examined the ability of multi-layer perceptrons (MLPs) trained with backpropagation to classify v...
A quadratic discriminant classification technique was used to classify spectral measurements from vo...
The spectral envelope is mainly determined by the shape of vocal tract and it is generally represent...
This paper describes research in the field of the improved methodology of the classification of vowe...
The accurate extraction of two particular features from the speech signal affected by additive white...
In continuous speech, the identification of phonemes requires the ability to extract features that a...
The objective of this study is to investigate whether Speech Evoked Potentials (SpEPs), which are au...
The objective of this study is to investigate whether Speech Evoked Potentials (SpEPs), which are au...
There are a lot of papers on automatic classification between normal and pathological voices, but th...
This thesis presents a study of alternative speech feature extraction methods aimed at increasing ro...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
Automatic speech recognition (ASR) has made great strides with the development of digital signal pro...
Automatic speech recognition (ASR) has made great strides with the development of digital signal pro...
We examined the ability of multi-layer perceptrons (MLPs) trained with backpropagation to classify v...
A quadratic discriminant classification technique was used to classify spectral measurements from vo...
The spectral envelope is mainly determined by the shape of vocal tract and it is generally represent...
This paper describes research in the field of the improved methodology of the classification of vowe...
The accurate extraction of two particular features from the speech signal affected by additive white...
In continuous speech, the identification of phonemes requires the ability to extract features that a...
The objective of this study is to investigate whether Speech Evoked Potentials (SpEPs), which are au...
The objective of this study is to investigate whether Speech Evoked Potentials (SpEPs), which are au...
There are a lot of papers on automatic classification between normal and pathological voices, but th...
This thesis presents a study of alternative speech feature extraction methods aimed at increasing ro...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...
This paper examines the performance of a vowel classification scheme using a new form of feature vec...