The Mel Frequency Cepstral Coefficients (MFCCs) are widely used in order to extract essential information from a voice signal and became a popular feature extractor used in audio processing. However, MFCC features are usually calculated from a single window (taper) characterized by large variance. This study shows investigations on reducing variance for the classification of two different voice qualities (normal voice and disordered voice) using multitaper MFCC features. We also compare their performance by newly proposed windowing techniques and conventional single-taper technique. The results demonstrate that adapted weighted Thomson multitaper method could distinguish between normal voice and disordered voice better than the results done...
Usually the mel-frequency cepstral coefficients (MFCCs) are derived via Hamming windowed DFT spectru...
Existing studies in classification of phonation types in singing use voice source features and Mel-f...
In this paper, we combine modulation spectral features with mel-frequency cepstral coefficients for ...
Copyright © 2015 Ö. Eskidere and A. Gürhanlı.This is an open access article distributed under the ...
Automatic voice pathology detection enables objective assessment of pathologies that affect the voic...
In speech and audio applications, short-term signal spectrum is often represented using mel-frequenc...
Abstract—In speech & audio applications, short-term signal spectrum is often represented using m...
Abstract—In speech and audio applications, short-term signal spectrum is often represented using mel...
Abstract Voice is an essential component of human communication, serving as a fundamental medium for...
This paper proposes new features aiming to improve the performance of an automatic voice pathology d...
In this paper, we combine modulation spectral features with mel-frequency cepstral coefficients for ...
Determining and classifying pathological human sounds are still an interesting area of research in t...
Previous studies on the automatic classification of voice disorders have mostly investigated the bin...
Voice source characteristics in different phonation types vary due to the tension of laryngeal muscl...
The comparative study of two types of voice signal representation for larynx pathology detection is ...
Usually the mel-frequency cepstral coefficients (MFCCs) are derived via Hamming windowed DFT spectru...
Existing studies in classification of phonation types in singing use voice source features and Mel-f...
In this paper, we combine modulation spectral features with mel-frequency cepstral coefficients for ...
Copyright © 2015 Ö. Eskidere and A. Gürhanlı.This is an open access article distributed under the ...
Automatic voice pathology detection enables objective assessment of pathologies that affect the voic...
In speech and audio applications, short-term signal spectrum is often represented using mel-frequenc...
Abstract—In speech & audio applications, short-term signal spectrum is often represented using m...
Abstract—In speech and audio applications, short-term signal spectrum is often represented using mel...
Abstract Voice is an essential component of human communication, serving as a fundamental medium for...
This paper proposes new features aiming to improve the performance of an automatic voice pathology d...
In this paper, we combine modulation spectral features with mel-frequency cepstral coefficients for ...
Determining and classifying pathological human sounds are still an interesting area of research in t...
Previous studies on the automatic classification of voice disorders have mostly investigated the bin...
Voice source characteristics in different phonation types vary due to the tension of laryngeal muscl...
The comparative study of two types of voice signal representation for larynx pathology detection is ...
Usually the mel-frequency cepstral coefficients (MFCCs) are derived via Hamming windowed DFT spectru...
Existing studies in classification of phonation types in singing use voice source features and Mel-f...
In this paper, we combine modulation spectral features with mel-frequency cepstral coefficients for ...