The present paper addresses the question of the efficiency of Independent Component Analysis (ICA) as a statistical process for deriving optimal representational bases for the projection of spectrum and cepstrum in the context of Automatic Speech Recognition (ASR). Several decorrelation strategies have been applied on the log-spectrum and cepstrum to fulfill the practical need of a diagonal covariance HMM for uncorrelated features. In our work we question the optimality of a fixed decorrelation strategy as DCT and follow an emerging trend in ASR that designs projection bases based on the statistics of speech. We differentiate our approach from the second order statistics o
A fundamental problem in neural network research, as well as in many other disciplines, is finding a...
This thesis research investigates and demonstrates the feasibility of performing computationally eff...
Projection spectral analysis is investigated and refined in this paper, in order to unify principal ...
We apply independent component analysis (ICA) for extracting an optimal basis to the problem of find...
In most HMM-based recognition systems, a mixture of diagonal covariance gaussians is used to model t...
This paper addresses the problem of representing the speech signal using a set of features that are ...
ICA which is generally used for blind source separation problem has been tested for feature extracti...
A new fixed-point algorithm for independent component analysis (ICA) is presented that is able blind...
In this paper we study various decorrelation methods for the features used in speech recognition and...
A latent variable generative model with finite noise is used to describe several different algorithm...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
Abstract. A new efficient code for speech signals is proposed. To represent speech signals with mini...
In this paper, a new spectral representation is introduced and applied to speech recognition. As the...
Unsupervised learning algorithms paying attention only to second-order statistics ignore the phase s...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
A fundamental problem in neural network research, as well as in many other disciplines, is finding a...
This thesis research investigates and demonstrates the feasibility of performing computationally eff...
Projection spectral analysis is investigated and refined in this paper, in order to unify principal ...
We apply independent component analysis (ICA) for extracting an optimal basis to the problem of find...
In most HMM-based recognition systems, a mixture of diagonal covariance gaussians is used to model t...
This paper addresses the problem of representing the speech signal using a set of features that are ...
ICA which is generally used for blind source separation problem has been tested for feature extracti...
A new fixed-point algorithm for independent component analysis (ICA) is presented that is able blind...
In this paper we study various decorrelation methods for the features used in speech recognition and...
A latent variable generative model with finite noise is used to describe several different algorithm...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
Abstract. A new efficient code for speech signals is proposed. To represent speech signals with mini...
In this paper, a new spectral representation is introduced and applied to speech recognition. As the...
Unsupervised learning algorithms paying attention only to second-order statistics ignore the phase s...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
A fundamental problem in neural network research, as well as in many other disciplines, is finding a...
This thesis research investigates and demonstrates the feasibility of performing computationally eff...
Projection spectral analysis is investigated and refined in this paper, in order to unify principal ...