Speech segmentation is an essential stage in designing automatic speech recognition systems and one can find several algorithms proposed in the literature. It is a difficult problem, as speech is immensely variable. The aim of the authors’ studies was to design an algorithm that could be employed at the stage of automatic speech recognition. This would make it possible to avoid some problems related to speech signal parametrization. Posing the problem in such a way requires the algorithm to be capable of working in real time. The only such algorithm was proposed by Tyagi et al., (2006), and it is a modified version of Brandt’s algorithm. The article presents a new algorithm for unsupervised automatic speech signal segmentation. It performs seg...
Automatic segmentation of audio streams according to speaker identities, environmental and channel c...
Automatic phone segmentation techniques based on model selection criteria are studied. We investigat...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
We explore new methods of determining automatically derived units for classification of speech into ...
This paper describes a method of automated segmentation of speech assuming the signal is continuousl...
This work considers one of the approaches to the solution of the task of discrete speech signal auto...
This correspondence describes a method for automated segmentation of speech. The method proposed in ...
This paper presents the automated speech signal segmentation problem. Segmentation algorithms based ...
Parameterization of the speech signal using the algorithms of analysis synchronized with the pitch f...
In this paper, we present some recent improvements in our automatic speech segmentation system, whic...
CNRS RS 14802 E / INIST-CNRS - Institut de l'Information Scientifique et TechniqueSIGLEFRFranc
A brief history of speech research is given along with the current state of the art in acoustic spee...
An automatic segmentation method is tested here, which uses a combination of entropy coding, continu...
Despite using different algorithms, most unsupervised automatic phone segmentation methods achieve s...
This submission is devoted to the study of the Bayesian autoregressive changepoint detector (BCD) an...
Automatic segmentation of audio streams according to speaker identities, environmental and channel c...
Automatic phone segmentation techniques based on model selection criteria are studied. We investigat...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...
We explore new methods of determining automatically derived units for classification of speech into ...
This paper describes a method of automated segmentation of speech assuming the signal is continuousl...
This work considers one of the approaches to the solution of the task of discrete speech signal auto...
This correspondence describes a method for automated segmentation of speech. The method proposed in ...
This paper presents the automated speech signal segmentation problem. Segmentation algorithms based ...
Parameterization of the speech signal using the algorithms of analysis synchronized with the pitch f...
In this paper, we present some recent improvements in our automatic speech segmentation system, whic...
CNRS RS 14802 E / INIST-CNRS - Institut de l'Information Scientifique et TechniqueSIGLEFRFranc
A brief history of speech research is given along with the current state of the art in acoustic spee...
An automatic segmentation method is tested here, which uses a combination of entropy coding, continu...
Despite using different algorithms, most unsupervised automatic phone segmentation methods achieve s...
This submission is devoted to the study of the Bayesian autoregressive changepoint detector (BCD) an...
Automatic segmentation of audio streams according to speaker identities, environmental and channel c...
Automatic phone segmentation techniques based on model selection criteria are studied. We investigat...
This paper addresses the problem of unsupervised speaker change detection. Three systems based on th...