Abstract — This paper presents a silent-speech interface based on electromyographic (EMG) signals recorded in the facial muscles. The distinctive feature of this system is that it is based on the recognition of syllables instead of phonemes or words, which is a compromise between both approaches with advantages as (a) clear delimitation and identification inside a word, and (b) reduced set of classification groups. This system transforms the EMG signals into robust-in-time feature vectors and uses them to train a boosting classifier. Experimental results demonstrated the effectiveness of our approach in three subjects, providing a mean classification rate of almost 70% (among 30 syllables). I
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition sy...
Besides its clinical applications, various researchers have shown that EMG can be utilised in areas ...
Abstract—This paper presents the results of our research in silent speech recognition (SSR) using Su...
This paper presents a silent-speech interface based on electromyographic (EMG) signals recorded in t...
This research examines the evaluation of fSEMG (facial surface Electromyogram) for recognizing speec...
During the speech, contractions of muscles in the speech apparatus produce myoelectric signals that ...
This paper discusses the use of surface electromyography for automatic speech recognition. Electromy...
The paper aims to identify speech using the facial muscle activity without the audio signals. The pa...
ABSTRACT During the speech, contractions of muscles in the speech apparatus produce myoelectric sign...
This paper presents a silent speech recognition technique based on facial muscle activity and video,...
This paper presents results of electromyography (EMG) speech recognition which captures the electric...
Abstract: An electromygraphic (EMG) Silent Speech Interface is a system which recognizes speech by c...
Speech is the natural medium of human communication, but audible speech can be overheard by bystande...
With 7.5 million people unable to speak due to various physical and mental conditions, patients are ...
The need for developing reliable and flexible human computer interface is increased and applications...
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition sy...
Besides its clinical applications, various researchers have shown that EMG can be utilised in areas ...
Abstract—This paper presents the results of our research in silent speech recognition (SSR) using Su...
This paper presents a silent-speech interface based on electromyographic (EMG) signals recorded in t...
This research examines the evaluation of fSEMG (facial surface Electromyogram) for recognizing speec...
During the speech, contractions of muscles in the speech apparatus produce myoelectric signals that ...
This paper discusses the use of surface electromyography for automatic speech recognition. Electromy...
The paper aims to identify speech using the facial muscle activity without the audio signals. The pa...
ABSTRACT During the speech, contractions of muscles in the speech apparatus produce myoelectric sign...
This paper presents a silent speech recognition technique based on facial muscle activity and video,...
This paper presents results of electromyography (EMG) speech recognition which captures the electric...
Abstract: An electromygraphic (EMG) Silent Speech Interface is a system which recognizes speech by c...
Speech is the natural medium of human communication, but audible speech can be overheard by bystande...
With 7.5 million people unable to speak due to various physical and mental conditions, patients are ...
The need for developing reliable and flexible human computer interface is increased and applications...
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition sy...
Besides its clinical applications, various researchers have shown that EMG can be utilised in areas ...
Abstract—This paper presents the results of our research in silent speech recognition (SSR) using Su...