Abstract—We present a new modeling approach for speaker recognition that uses the maximum-likelihood linear regression (MLLR) adaptation transforms employed by a speech recognition system as features for support vector machine (SVM) speaker models. This approach is attractive because, unlike standard frame-based cepstral speaker recognition models, it normalizes for the choice of spoken words in text-independent speaker verification without data fragmentation. We discuss the basics of the MLLR-SVM approach, and show how it can be enhanced by combining transforms relative to multiple reference models, with excellent results on recent English NIST evaluation sets. We then show how the approach can be applied even if no full word-level recogni...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...
This paper presents a new modeling framework which naturally extends the Hidden Markov Model (HMM) a...
Abstract The use of adaptation transforms common in speech recognition systems as features for speak...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
We previously proposed the use of MLLR transforms derived from a speech recognition system as speake...
Inter-speaker variation can be coped rather well in speech recognition by speaker adaptation techniq...
This paper compares two of the leading techniques for session variability compensation in the contex...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...
This paper presents a new modeling framework which naturally extends the Hidden Markov Model (HMM) a...
Abstract The use of adaptation transforms common in speech recognition systems as features for speak...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
Speaker recognition using support vector machines (SVMs) with features derived from generative model...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
We previously proposed the use of MLLR transforms derived from a speech recognition system as speake...
Inter-speaker variation can be coped rather well in speech recognition by speaker adaptation techniq...
This paper compares two of the leading techniques for session variability compensation in the contex...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...
This paper presents a new modeling framework which naturally extends the Hidden Markov Model (HMM) a...
Abstract The use of adaptation transforms common in speech recognition systems as features for speak...