Speaker change detection is done in many speaker and speech identification applications that the speech is from two speakers. However, the standard metric-based methods performance is not suitable and stable owing to the amid window distance calculation stability. Therefore, a new method is proposed to improve the stability and enhance the performance of the system according to speakers' characteristics using between window correlations. Moreover, reference speaker models set that shows the space of the entire speaker model are trained in this approach. A metric is defined as the between window correlation of scores likelihood vectors versus the reference models. The Peak and Valley information and gender information are also used. In this ...
Gaussian mixture models (GMMs) are commonly used in text-independent speaker identification systems....
Abstract. This paper addresses the problem of real-time speaker segmentation and speaker tracking in...
Copyright IEEE. Personal use of this material is permitted. However, permission to reprint/republish...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
This paper deals with problems of speaker change detection in acoustic data. The aim is to identify ...
Differentiating speakers participating in telephone conversations is a challenging task in speech pr...
Abstract: The paper deals with the problem of automatic speaker change detec-tion. A new metric-base...
We discuss the multi-speaker tasks of detection, tracking, and segmentation of speakers as included ...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
This paper addresses unsupervised speaker change detection, a necessary step for several indexing ta...
Abstract. In this paper, a speaker segmentation method based on log-likelihood ratio score (LLRS) ov...
Matching algorithms have significant importance in speaker recognition. Feature vectors of the unkno...
In this paper, we present a hybrid speaker-based segmentation, which combines metric-based and model...
Presented paper takes interest in a speaker identification problem. The attributes representing voic...
In large population speaker identification (SI) systems, like-lihood computations between an unknown...
Gaussian mixture models (GMMs) are commonly used in text-independent speaker identification systems....
Abstract. This paper addresses the problem of real-time speaker segmentation and speaker tracking in...
Copyright IEEE. Personal use of this material is permitted. However, permission to reprint/republish...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
This paper deals with problems of speaker change detection in acoustic data. The aim is to identify ...
Differentiating speakers participating in telephone conversations is a challenging task in speech pr...
Abstract: The paper deals with the problem of automatic speaker change detec-tion. A new metric-base...
We discuss the multi-speaker tasks of detection, tracking, and segmentation of speakers as included ...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
This paper addresses unsupervised speaker change detection, a necessary step for several indexing ta...
Abstract. In this paper, a speaker segmentation method based on log-likelihood ratio score (LLRS) ov...
Matching algorithms have significant importance in speaker recognition. Feature vectors of the unkno...
In this paper, we present a hybrid speaker-based segmentation, which combines metric-based and model...
Presented paper takes interest in a speaker identification problem. The attributes representing voic...
In large population speaker identification (SI) systems, like-lihood computations between an unknown...
Gaussian mixture models (GMMs) are commonly used in text-independent speaker identification systems....
Abstract. This paper addresses the problem of real-time speaker segmentation and speaker tracking in...
Copyright IEEE. Personal use of this material is permitted. However, permission to reprint/republish...