For large-scale deployments of speaker verification systems models size can be an important issue for not only minimizing storage requirements but also reducing transfer time of models over networks. Model size is also critical for deployments to small, portable devices. In this paper we present a new model compression technique for Gaussian Mixture Model (GMM) based speaker recognition systems. For GMM systems using adaptation from a background model, the compression technique exploits the fact that speaker models are adapted from a single speakerindependent model and not all parameters need to be stored. We present results on the 2002 NIST speaker recognition evaluation cellular telephone corpus and show that the compression technique pro...
This paper describes a speaker recognition system based on feature extraction utilizing the constrai...
In this paper, the performance of speaker modeling schemes such as vector quantization (VQ) and Gaus...
This article describes a general and powerful approach to modelling mismatch in speaker recognition ...
Speaker adaptation is an important step in optimization and personalization of the performance of au...
Most of current state-of-the-art speaker verification (SV) systems use Gaussian mixture model (GMM) ...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
This report givens an overview of a Gaussian Mixture Model – Universal Background Model (GMM-UBM) sy...
Speaker recognition is a biometric operation of accepting a claimed person based on analyzing his sp...
Voice recognition has become a more focused and researched field in the last century,and new techniq...
The paper revives an older approach to acoustic modeling that borrows from n-gram language modeling ...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This chapter describes anchor model-based speaker recognition with phonetic modeling. Gaussian Mixtu...
This paper presents an experimental implementation of a low-complexity speaker recognition algorithm...
In this paper, we present several methods for mapping recognition engine requirements to mobile phon...
This paper describes a speaker recognition system based on feature extraction utilizing the constrai...
In this paper, the performance of speaker modeling schemes such as vector quantization (VQ) and Gaus...
This article describes a general and powerful approach to modelling mismatch in speaker recognition ...
Speaker adaptation is an important step in optimization and personalization of the performance of au...
Most of current state-of-the-art speaker verification (SV) systems use Gaussian mixture model (GMM) ...
Despite intuitive expectation and experimental evidence that phonemes contain useful speaker discrim...
This report givens an overview of a Gaussian Mixture Model – Universal Background Model (GMM-UBM) sy...
Speaker recognition is a biometric operation of accepting a claimed person based on analyzing his sp...
Voice recognition has become a more focused and researched field in the last century,and new techniq...
The paper revives an older approach to acoustic modeling that borrows from n-gram language modeling ...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This chapter describes anchor model-based speaker recognition with phonetic modeling. Gaussian Mixtu...
This paper presents an experimental implementation of a low-complexity speaker recognition algorithm...
In this paper, we present several methods for mapping recognition engine requirements to mobile phon...
This paper describes a speaker recognition system based on feature extraction utilizing the constrai...
In this paper, the performance of speaker modeling schemes such as vector quantization (VQ) and Gaus...
This article describes a general and powerful approach to modelling mismatch in speaker recognition ...