International audienceThis paper proposes an approach to detect social speech signals by computing segmental features using adaptation of segmental Hidden Markov Models (HMMs). This approach uses segmental HMMs and model adaptation techniques such as Maximum Likelihood Linear Regression (MLLR) and Maximum A Posterior (MAP) in order to acquire specific (or adapted) segmental HMMs that are fine-tuned to detect local regions of social signals such as laughter and fillers. Several segmental features are computed on automatically segmented audio with the specific segmental HMMs. Subsequently, the segmental features are used to detect social signals using Support Vector Machines (SVMs). The results indicate that the proposed segmental features pl...
The most frequently used methods of automatic detection and classification of speech disordersare ba...
This paper describes two algorithms for speech/pause detection based on Hidden Markov Models. There ...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
This paper proposes an approach to detect social speech signals by computing segmental features usin...
Phenomena like filled pauses, laughter, breathing, hesitation, etc. play significant role in everyda...
The Hidden Markov Model (HMM) is a stochastic approach to recognition of patterns appearing in an in...
This is the final report for EOARD project #033060 “Speaker verifica-tion using a dynamic, ‘articula...
This thesis introduces an autoregressive hidden Markov model (HMM) and demonstrates its application ...
In this paper, after an a review of the previous work done in this field, the most frequently used a...
Hidden Markov Models (HMMs) provides an effective framework for the modeling of time-varying sequenc...
In this paper we develop automatic speech segmentation to phonemes using hybrid system based on Hid...
In this paper the incorporation of important phonetic properties into hidden Markov models (HMM) is ...
In this paper we develop automatic speech segmentation to phonemes using hybrid system based on Hid...
Natural language processing enables computer and machines to understand and speak human languages. S...
The performance of automatic speech recognition (ASR) system can be significantly enhanced with addi...
The most frequently used methods of automatic detection and classification of speech disordersare ba...
This paper describes two algorithms for speech/pause detection based on Hidden Markov Models. There ...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
This paper proposes an approach to detect social speech signals by computing segmental features usin...
Phenomena like filled pauses, laughter, breathing, hesitation, etc. play significant role in everyda...
The Hidden Markov Model (HMM) is a stochastic approach to recognition of patterns appearing in an in...
This is the final report for EOARD project #033060 “Speaker verifica-tion using a dynamic, ‘articula...
This thesis introduces an autoregressive hidden Markov model (HMM) and demonstrates its application ...
In this paper, after an a review of the previous work done in this field, the most frequently used a...
Hidden Markov Models (HMMs) provides an effective framework for the modeling of time-varying sequenc...
In this paper we develop automatic speech segmentation to phonemes using hybrid system based on Hid...
In this paper the incorporation of important phonetic properties into hidden Markov models (HMM) is ...
In this paper we develop automatic speech segmentation to phonemes using hybrid system based on Hid...
Natural language processing enables computer and machines to understand and speak human languages. S...
The performance of automatic speech recognition (ASR) system can be significantly enhanced with addi...
The most frequently used methods of automatic detection and classification of speech disordersare ba...
This paper describes two algorithms for speech/pause detection based on Hidden Markov Models. There ...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...