ABSTRACT This document describes an extension of the Subspace Gaussian Mixture Model (SGMM). The extension is a symmetrization of the model, which makes the speaker and speech-state subspaces behave in the same way. The difference relates to the way the Gaussian weights within the substates are handled: now they depend on the speaker vector as well as the speech-state vector. This requires a little more per-speaker computation (to compute certain per-speechstate normalizing factors), but the main cost is in additional memory. The memory consumed by the model is almost doubled as we need to store in memory a new precomputed quantity. However, this method gives quite respectable WER improvements and it seems likely that it would give even gre...
This paper investigates the impact of subspace based techniques for acoustic modeling in automatic s...
This paper provides an overview of Gaussian Mixture Model (GMM) and its component of speech signal. ...
This paper investigates employment of Subspace Gaussian Mixture Models (SGMMs) for acoustic model ad...
Last year we introduced the Subspace Gaussian Mixture Model (SGMM), and we demonstrated Word Error R...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe a new approach to speech recognition, in which all Hidden Markov Model (HMM) states shar...
In recent years, under the hidden Markov modeling (HMM) framework, the use of subspace Gaussian mixt...
A recent series of papers [1, 2, 3, 4] introduced Subspace Constrained Gaussian Mixture Models (SCGM...
This thesis has been submitted in fulfilment of the requirements for a postgraduate degree (e.g. PhD...
This paper describes experimental results of applying Subspace Gaussian Mixture Models (SGMMs) in tw...
Traditional subspace based speech enhancement (SSE)methods\ud use linear minimum mean square error (...
The subspace Gaussian mixture model (SGMM) has been exploited for cross-lingual speech recognition. ...
Traditional subspace based speech enhancement (SSE)methods use linear minimum mean square error (LM...
This paper investigates the impact of subspace based techniques for acoustic modeling in automatic s...
This paper provides an overview of Gaussian Mixture Model (GMM) and its component of speech signal. ...
This paper investigates employment of Subspace Gaussian Mixture Models (SGMMs) for acoustic model ad...
Last year we introduced the Subspace Gaussian Mixture Model (SGMM), and we demonstrated Word Error R...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe a new approach to speech recognition, in which all Hidden Markov Model (HMM) states shar...
In recent years, under the hidden Markov modeling (HMM) framework, the use of subspace Gaussian mixt...
A recent series of papers [1, 2, 3, 4] introduced Subspace Constrained Gaussian Mixture Models (SCGM...
This thesis has been submitted in fulfilment of the requirements for a postgraduate degree (e.g. PhD...
This paper describes experimental results of applying Subspace Gaussian Mixture Models (SGMMs) in tw...
Traditional subspace based speech enhancement (SSE)methods\ud use linear minimum mean square error (...
The subspace Gaussian mixture model (SGMM) has been exploited for cross-lingual speech recognition. ...
Traditional subspace based speech enhancement (SSE)methods use linear minimum mean square error (LM...
This paper investigates the impact of subspace based techniques for acoustic modeling in automatic s...
This paper provides an overview of Gaussian Mixture Model (GMM) and its component of speech signal. ...
This paper investigates employment of Subspace Gaussian Mixture Models (SGMMs) for acoustic model ad...