In this work, the significance of combining the evidence from multitaper mel-frequency cepstral coefficients (MFCC), linear prediction residual (LPR), and linear prediction residual phase (LPRP) features for multilingual speaker identification with the constraint of limited data condition is demonstrated. The LPR is derived from linear prediction analysis, and LPRP is obtained by dividing the LPR using its Hilbert envelope. The sine-weighted cepstrum estimators (SWCE) with six tapers are considered for multitaper MFCC feature extraction. The Gaussian mixture model–universal background model is used for modeling each speaker for different evidence. The evidence is then combined at scoring level to improve the performance. The monolingual, cr...
We propose a novel feature set for speaker recognition that is based on the voice source signal. The...
This paper presents an effective method for improving the performance of a speaker identification sy...
The present work demonstrates experimental evaluation of speaker verification for different speech f...
This paper introduces the use of two new features for speaker identification, Residual Phase Cepstru...
This paper introduces the use of two new features for speaker identification, Residual Phase Cepstru...
The Capstrum coefficient features analysis plays a crucial role in the overall performance of the mu...
Speaker identification and verification has received a great deal of attention from the speech commu...
Abstract — In this paper we demonstrate the impact of language parameter variability on mono, cross ...
This paper presents a new feature for speaker identification called perceptual log area ratio (PLAR)...
A novel Linear Prediction (LPC) based Automatic Speaker Identification (ASI) technique employing mul...
This paper describes a unique cross-phoneme speaker identification experiment, using deliberately mi...
The objective of this letter is to demonstrate the complementary nature of speaker-specific informat...
This article evaluates the performance of Extreme Learning Machine (ELM) and Gaussian Mixture Model ...
A state of the art Speaker Identification (SI) system requires a robust feature extraction unit foll...
A person's voice contains various parameters that convey information such as emotion, gender, attitu...
We propose a novel feature set for speaker recognition that is based on the voice source signal. The...
This paper presents an effective method for improving the performance of a speaker identification sy...
The present work demonstrates experimental evaluation of speaker verification for different speech f...
This paper introduces the use of two new features for speaker identification, Residual Phase Cepstru...
This paper introduces the use of two new features for speaker identification, Residual Phase Cepstru...
The Capstrum coefficient features analysis plays a crucial role in the overall performance of the mu...
Speaker identification and verification has received a great deal of attention from the speech commu...
Abstract — In this paper we demonstrate the impact of language parameter variability on mono, cross ...
This paper presents a new feature for speaker identification called perceptual log area ratio (PLAR)...
A novel Linear Prediction (LPC) based Automatic Speaker Identification (ASI) technique employing mul...
This paper describes a unique cross-phoneme speaker identification experiment, using deliberately mi...
The objective of this letter is to demonstrate the complementary nature of speaker-specific informat...
This article evaluates the performance of Extreme Learning Machine (ELM) and Gaussian Mixture Model ...
A state of the art Speaker Identification (SI) system requires a robust feature extraction unit foll...
A person's voice contains various parameters that convey information such as emotion, gender, attitu...
We propose a novel feature set for speaker recognition that is based on the voice source signal. The...
This paper presents an effective method for improving the performance of a speaker identification sy...
The present work demonstrates experimental evaluation of speaker verification for different speech f...