We describe Maximum-Likelihood Continuity Mapping (MALCOM), an alternative to hidden Markov models (HMMs) for processing sequence data such as speech. While HMMs have a discrete "hidden " space con-strained by a fixed finite-automaton architecture, MALCOM has a con-tinuous hidden space-a continuity map-that is constrained only by a smoothness requirement on paths through the space. MALCOM fits into the same probabilistic framework for speech recognition as HMMs, but it represents a more realistic model of the speech production process. To evaluate the extent to which MALCOM captures speech production information, we generated continuous speech continuity maps for three speakers and used the paths through them to predict measured s...
We propose the application of a recently introduced inference method, the Block Diagonal Infinite Hi...
This thesis investigates a stochastic modeling approach to word hypothesis of phonetic strings for a...
During the last decade the field of speech recognition has used the theory of hidden Markov models (...
The authors describe Maximum-Likelihood Continuity Mapping (MALCOM) as an alternative to hidden Mark...
GMMs are among the best speaker recognition algorithms currently available. However, the GMM`s estim...
The author describes a novel time-series analysis technique called maximum likelihood continuity map...
This paper proposes a new kind of hidden Markov model (HMM) based on multi-space probability distrib...
Hidden Markov models (HMM`s) are among the most popular tools for performing computer speech recogni...
The conditional independence assumption imposed by the hidden Markov models (HMMs) makes it difficul...
A Hidden-Articulator Markov Model (HAMM) is a Hidden Markov Model (HMM) in which each state represen...
Abstract-Speech recognition is formulated as a problem of maximum likelihood decoding. This formulat...
In the past decade, semi-continuous hidden Markov models (SC-HMMs) have not attracted much attention...
The article presents an HMM-based mapping approach for converting ultrasound and video images of the...
We investigated the use of Hidden Markov Models (HMMs) as a way of representing repertoires of conti...
Abstract the co-articulation is one of the main reasons that makes the speech recognition difficult....
We propose the application of a recently introduced inference method, the Block Diagonal Infinite Hi...
This thesis investigates a stochastic modeling approach to word hypothesis of phonetic strings for a...
During the last decade the field of speech recognition has used the theory of hidden Markov models (...
The authors describe Maximum-Likelihood Continuity Mapping (MALCOM) as an alternative to hidden Mark...
GMMs are among the best speaker recognition algorithms currently available. However, the GMM`s estim...
The author describes a novel time-series analysis technique called maximum likelihood continuity map...
This paper proposes a new kind of hidden Markov model (HMM) based on multi-space probability distrib...
Hidden Markov models (HMM`s) are among the most popular tools for performing computer speech recogni...
The conditional independence assumption imposed by the hidden Markov models (HMMs) makes it difficul...
A Hidden-Articulator Markov Model (HAMM) is a Hidden Markov Model (HMM) in which each state represen...
Abstract-Speech recognition is formulated as a problem of maximum likelihood decoding. This formulat...
In the past decade, semi-continuous hidden Markov models (SC-HMMs) have not attracted much attention...
The article presents an HMM-based mapping approach for converting ultrasound and video images of the...
We investigated the use of Hidden Markov Models (HMMs) as a way of representing repertoires of conti...
Abstract the co-articulation is one of the main reasons that makes the speech recognition difficult....
We propose the application of a recently introduced inference method, the Block Diagonal Infinite Hi...
This thesis investigates a stochastic modeling approach to word hypothesis of phonetic strings for a...
During the last decade the field of speech recognition has used the theory of hidden Markov models (...