Similarity normalization techniques are important for speaker verification systems as they help to better cope with speaker variability. In the conventional normalization, the a priori probabilities of the cohort speakers are assumed to be equal. From this standpoint, we apply the theory of fuzzy measure and fuzzy integral to combine the likelihood values of the cohort speakers in which the assumption of equal a priori probabilities is relaxed. This approach replaces the conven-tional normalization term by the fuzzy integral which acts as a non-linear fusion of the similarity measures of an ut-terance assigned to cohort speakers. Experimental results show that the speaker verification system using the fuzzy integral is more flexible and fav...
The biometric and forensic performance of automatic speaker recognition systems degrades under noisy...
The overall success of automatic speech recognition (ASR) depends on efficient phoneme recognition p...
In this paper we have studied two information fusion approaches, namely feature vector concatenation...
Similarity or likelihood normalization techniques are important for speaker verification systems as ...
This paper proposes normalisation methods based on fuzzy set theory for speaker verication. A claime...
This paper proposes a fuzzy approach to speaker verication. For an input utterance and a claimed ide...
Abstract. The normalisation method for speaker verification proposed in this paper is based on the i...
This paper presents an overview of a state-of-the-art text-independent speaker verification system u...
In this paper we propose a new fusion technique, termed Joint Cohort Normalization Fusion, where the...
In iVector-based speaker verification system, the claimed speaker was verified if the similarity bet...
This paper proposes a method to estimate the a priori probability for speakers based on the training...
This is the author’s version of a work that was accepted for publication in Pattern Recognition Lett...
International audienceThis paper presents a study on merging confidence measures using fuzzy logic. ...
In this work we improve the performance of a speaker verification system by matching the feature vec...
A unified fuzzy approach to statistical models for speech and speaker recognition is presented in th...
The biometric and forensic performance of automatic speaker recognition systems degrades under noisy...
The overall success of automatic speech recognition (ASR) depends on efficient phoneme recognition p...
In this paper we have studied two information fusion approaches, namely feature vector concatenation...
Similarity or likelihood normalization techniques are important for speaker verification systems as ...
This paper proposes normalisation methods based on fuzzy set theory for speaker verication. A claime...
This paper proposes a fuzzy approach to speaker verication. For an input utterance and a claimed ide...
Abstract. The normalisation method for speaker verification proposed in this paper is based on the i...
This paper presents an overview of a state-of-the-art text-independent speaker verification system u...
In this paper we propose a new fusion technique, termed Joint Cohort Normalization Fusion, where the...
In iVector-based speaker verification system, the claimed speaker was verified if the similarity bet...
This paper proposes a method to estimate the a priori probability for speakers based on the training...
This is the author’s version of a work that was accepted for publication in Pattern Recognition Lett...
International audienceThis paper presents a study on merging confidence measures using fuzzy logic. ...
In this work we improve the performance of a speaker verification system by matching the feature vec...
A unified fuzzy approach to statistical models for speech and speaker recognition is presented in th...
The biometric and forensic performance of automatic speaker recognition systems degrades under noisy...
The overall success of automatic speech recognition (ASR) depends on efficient phoneme recognition p...
In this paper we have studied two information fusion approaches, namely feature vector concatenation...