Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel distortions, additive noise and reverberation. To address these issues, this thesis studies probabilistic latent variable models of short-term spectral information that leverage large amounts of data to achieve robustness in challenging conditions. Current speaker recognition systems represent an entire speech utterance as a single point in a high-dimensional space. This representation is known as “supervector”. This thesis starts by analyzing the properties of this representation. A novel visualization procedure of supervectors is presented by which qualitative insight about the information being captured is obtained. We then propose the us...
Most state-of-the-art speaker recognition systems are partially or completely based on Gaussian mixt...
Speaker recognition is a frequently overlooked form of biometric security. Text-independent speaker ...
This paper presents an original speaker recognition system that utilizes a quantized spectral covari...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal ...
This book discusses speaker recognition methods to deal with realistic variable noisy environments. ...
In recent years, adaptation techniques have been given special focus in speaker recognition tasks, m...
In this paper, we present a newmodeling approach for speaker recognition, which uses a kind of novel...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
Building a voice model means to capture the characteristics of a speaker´s voice in a data structure...
A PC-based system for robust speaker recognition is proposed. It includes three one level recognitio...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Speaker recognition in noisy environments is challenging when there is a mis-match in the data used ...
Speech is a signal that includes speaker's emotion, characteristic specification, phoneme-informatio...
I hereby declare that I am the sole author of this thesis. I authorize the University of Waterloo to...
Most state-of-the-art speaker recognition systems are partially or completely based on Gaussian mixt...
Speaker recognition is a frequently overlooked form of biometric security. Text-independent speaker ...
This paper presents an original speaker recognition system that utilizes a quantized spectral covari...
Automatic speaker recognition in uncontrolled environments is a very challenging task due to channel...
Supervectors represent speaker-specific Gaussian Mixture Models which are enrolled from a Universal ...
This book discusses speaker recognition methods to deal with realistic variable noisy environments. ...
In recent years, adaptation techniques have been given special focus in speaker recognition tasks, m...
In this paper, we present a newmodeling approach for speaker recognition, which uses a kind of novel...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
Building a voice model means to capture the characteristics of a speaker´s voice in a data structure...
A PC-based system for robust speaker recognition is proposed. It includes three one level recognitio...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Speaker recognition in noisy environments is challenging when there is a mis-match in the data used ...
Speech is a signal that includes speaker's emotion, characteristic specification, phoneme-informatio...
I hereby declare that I am the sole author of this thesis. I authorize the University of Waterloo to...
Most state-of-the-art speaker recognition systems are partially or completely based on Gaussian mixt...
Speaker recognition is a frequently overlooked form of biometric security. Text-independent speaker ...
This paper presents an original speaker recognition system that utilizes a quantized spectral covari...