In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that combines the advantages of three conventional algorithms, maximum a posteriori (MAP), maximum-likelihood linear regression (MLLR), and eigenvoice, resulting in excellent performance across a wide range of adaptation conditions. The new method efficiently utilizes intra-speaker and inter-speaker correlation information through modeling phone and speaker subspaces in a consistent hierarchical Bayesian way. The phone variations for a specific speaker are assumed to be located in a low-dimensional subspace. The phone coordinate, which is shared among different speakers, implicitly contains the intra-speaker correlation information. For a specific s...
Abstract — We describe a new method of estimating speaker-dependent HMM’s for speakers in a closed p...
This paper describes an efficient method for unsupervised speaker adaptation. This method is based o...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
Abstract—In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is propose...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
Traditional n-gram language models are widely used in state-of-the-art large vocabulary speech recog...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Abstract—In this letter, we propose a rapid speaker adapta-tion technique based on the probabilistic...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Abstract — We describe a new method of estimating speaker-dependent HMM’s for speakers in a closed p...
This paper describes an efficient method for unsupervised speaker adaptation. This method is based o...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...
In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is proposed that co...
Abstract—In this paper, a new hierarchical Bayesian speaker adaptation method called HMAP is propose...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents new results by using our previously proposed on-line Bayesian learning approach ...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
Recent advances in automatic speech recognition are accomplished by designing a plug-in maximum a po...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
Traditional n-gram language models are widely used in state-of-the-art large vocabulary speech recog...
This paper presents a new recursive Bayesian learning approach for transformation parameter estimati...
Abstract—In this letter, we propose a rapid speaker adapta-tion technique based on the probabilistic...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Abstract — We describe a new method of estimating speaker-dependent HMM’s for speakers in a closed p...
This paper describes an efficient method for unsupervised speaker adaptation. This method is based o...
We introduce a new adaptive Bayesian learning framework, called multiple-stream prior evolution and ...