International audienceIn this work, we present a new approach for the classification and detection of speech units for the use in landmark or eventbased speech recognition systems. We use segmentation to model any time-variable speech unit by a fixed-dimensional observation vector, in order to train a committee of boosted decision stumps on labeled training data. Given an unknown speech signal, the presence of a desired speech unit is estimated by searching for each time frame the corresponding segment, that provides the maximum classification score. This approach improves the accuracy of a phoneme classification task by 1.7%, compared to classification using HMMs. Applying this approach to the detection of broad phonetic landmarks inside a...
peer-reviewedSpeech models and features that emphasise the dynamic aspects of speech can provide imp...
Speech is composed of basic speech sounds called phonemes, and these subword units are the foundatio...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
International audienceIn this work, we present a new approach for the classification and detection o...
Concatenative speech synthesis depends on accurate segmentation of the pho-nemes in a training corpu...
The training of precise speech recognition models depends on accurate segmentation of the phonemes i...
Thesis (Ph. D.)—Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
Although speech recognition technology has significantly improved during the past few decades, curre...
International audienceThis work presents a novel framework to guide the Viterbi decoding process of ...
In this paper we propose an effective, robust and computationally low-cost HMM-based start-endpoint ...
A probabilistic and statistical framework is presented for automatic speech recognition based on a p...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
We explore new methods of determining automatically derived units for classification of speech into ...
peer-reviewedSpeech models and features that emphasise the dynamic aspects of speech can provide imp...
Speech is composed of basic speech sounds called phonemes, and these subword units are the foundatio...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
International audienceIn this work, we present a new approach for the classification and detection o...
Concatenative speech synthesis depends on accurate segmentation of the pho-nemes in a training corpu...
The training of precise speech recognition models depends on accurate segmentation of the phonemes i...
Thesis (Ph. D.)—Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
Although speech recognition technology has significantly improved during the past few decades, curre...
International audienceThis work presents a novel framework to guide the Viterbi decoding process of ...
In this paper we propose an effective, robust and computationally low-cost HMM-based start-endpoint ...
A probabilistic and statistical framework is presented for automatic speech recognition based on a p...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
We explore new methods of determining automatically derived units for classification of speech into ...
peer-reviewedSpeech models and features that emphasise the dynamic aspects of speech can provide imp...
Speech is composed of basic speech sounds called phonemes, and these subword units are the foundatio...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...