In this paper we propose a visual speech recognition network based on Support Vector Machines. Each word of the dictionary is described as a temporal sequence of visemes. Each viseme is described by a support vector machine, and the temporal character of speech is modeled by integrating the support vector machines as nodes into a Viterbi decoding lattice. Experiments conducted on a small visual speech recognition task show a word recognition rate on the level of the best rates previously reported, even without training the state transition probabilities in the Viterbi lattice and using very simple features. This proves the suitability of support vector machines for visual speech recognition
This paper presents a vision based technique to identify the unspoken phones using a small camera th...
This paper presents a vision-based approach to recognize speech without evaluating the acoustic sign...
Automatic speech recognition (ASR) permits effective interaction between humans and machines in envi...
Visual speech recognition is an emerging research field. In this paper, we examine the suitability o...
A lip-reading technique that identifies visemes from visual data only and without evaluating the cor...
This paper presents the development of a novel visual speech recognition (VSR) system based on a new...
In this paper we propose a new learning-based representation that is referred to as Visual Speech Un...
Abstract—This paper proposes the implementation of a Support Vector Machine (SVM) for automatic reco...
It is noteworthy nowadays that monitoring and understanding a human’s emotional state plays a ...
Although Support Vector Machines (SVMs) have been proved to be very powerful classifiers, they still...
Inspired by recent findings on the similarities between the primary auditory and visual cortex we pr...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Many computational models of speech recognition assume that the set of target words is already given...
Traditional visual speech recognition systems consist of two stages, feature extraction and classifi...
Speech recognition systems aim to make human machine communication quickly and easily. In recent yea...
This paper presents a vision based technique to identify the unspoken phones using a small camera th...
This paper presents a vision-based approach to recognize speech without evaluating the acoustic sign...
Automatic speech recognition (ASR) permits effective interaction between humans and machines in envi...
Visual speech recognition is an emerging research field. In this paper, we examine the suitability o...
A lip-reading technique that identifies visemes from visual data only and without evaluating the cor...
This paper presents the development of a novel visual speech recognition (VSR) system based on a new...
In this paper we propose a new learning-based representation that is referred to as Visual Speech Un...
Abstract—This paper proposes the implementation of a Support Vector Machine (SVM) for automatic reco...
It is noteworthy nowadays that monitoring and understanding a human’s emotional state plays a ...
Although Support Vector Machines (SVMs) have been proved to be very powerful classifiers, they still...
Inspired by recent findings on the similarities between the primary auditory and visual cortex we pr...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Many computational models of speech recognition assume that the set of target words is already given...
Traditional visual speech recognition systems consist of two stages, feature extraction and classifi...
Speech recognition systems aim to make human machine communication quickly and easily. In recent yea...
This paper presents a vision based technique to identify the unspoken phones using a small camera th...
This paper presents a vision-based approach to recognize speech without evaluating the acoustic sign...
Automatic speech recognition (ASR) permits effective interaction between humans and machines in envi...