In this paper, we describe a novel speaker adaptation algorithm based on Gaussian mixture weight adaptation. A small number of latent speaker vectors are estimated with non-negative matrix factorization (NMF). These base vectors encode the correlations between Gaussian activations as learned from the train data. Expressing the speaker dependent Gaussian mixture weights as a linear combination of a small number of base vectors, reduces the number of parameters that must be estimated from the enrollment data. In order to learn meaningful correlations between Gaussian activations from the train data, the NMF-based weight adaptation was combined with vocal tract length normalization (VTLN) and feature-space maximum likelihood linear regression ...
Abstract—Recent studies show that Gaussian mixture model (GMM) weights carry less, yet complimentary...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
In real-time speech recognition applications, there is a need to implement a fast and reliable adapt...
A novel speaker adaptation algorithm based on Gaussian mixture weight adaptation is described. A sma...
This paper describes a new method for fast speaker adaptation in large vocabulary recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
Abstract — Speaker space based adaptation methods for auto-matic speech recognition have been shown ...
This paper introduces a speaker adaptation algorithm for nonnegative matrix factorization (NMF) mode...
Abstract This paper introduces a speaker adaptation algorithm for nonnegative matrix factorization (...
In this paper, a new method called Maximum Likelihood Neural Regression (MLNR) is introduced for Rap...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
Abstract—Recent studies show that Gaussian mixture model (GMM) weights carry less, yet complimentary...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
In real-time speech recognition applications, there is a need to implement a fast and reliable adapt...
A novel speaker adaptation algorithm based on Gaussian mixture weight adaptation is described. A sma...
This paper describes a new method for fast speaker adaptation in large vocabulary recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
Abstract — Speaker space based adaptation methods for auto-matic speech recognition have been shown ...
This paper introduces a speaker adaptation algorithm for nonnegative matrix factorization (NMF) mode...
Abstract This paper introduces a speaker adaptation algorithm for nonnegative matrix factorization (...
In this paper, a new method called Maximum Likelihood Neural Regression (MLNR) is introduced for Rap...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
Abstract—Recent studies show that Gaussian mixture model (GMM) weights carry less, yet complimentary...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
In real-time speech recognition applications, there is a need to implement a fast and reliable adapt...