This thesis describes the implementation of an automatic speech recognition system based on surface electromyography signals. Data collection was done using a bipolar electrode configuration with a sampling rate of 5.77 kHz. Four feature sets, the short-time Fourier transform (STFT), the dual-tree complex wavelet transform (DTCWT), a non-causal time-domain based (E4-NC), and a causal version of E4-NC (E4-C) were implemented. Classification was performed using a hidden Markov model (HMM). The system implemented was able to achieve an accuracy rate of 74.24 % with E4-NC and 61.25 % with E4-C. These results are comparable to previously reported results for offline, single session, isolated word recognition. Additional testing was performed on ...
Assistance systems for people with Cerebrovascular Accident (CVA) after-effects such as dysarthria a...
This paper discusses the use of surface electromyography for automatic speech recognition. Electromy...
With 7.5 million people unable to speak due to various physical and mental conditions, patients are ...
Speech is the natural medium of human communication, but audible speech can be overheard by bystande...
This research examines the evaluation of fSEMG (facial surface Electromyogram) for recognizing speec...
This paper presents results of electromyography (EMG) speech recognition which captures the electric...
During the speech, contractions of muscles in the speech apparatus produce myoelectric signals that ...
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition sy...
In this paper we introduce a speech recognition system based on myoelectric signals. The system hand...
ABSTRACT During the speech, contractions of muscles in the speech apparatus produce myoelectric sign...
A method for synthesizing speech from surface electromyogram (SEMG) signals in a frame-by-frame basi...
For some time, new methods based on a different than acoustic signal analysis are used for speech re...
Surface electromyographic (sEMG) is an acquisition technique based on recording muscles potential ov...
A range of signal processing techniques have been adopted and developed as a methodology which can b...
This paper presents a methodology that uses surface electromyogram (SEMG) signals recorded from the ...
Assistance systems for people with Cerebrovascular Accident (CVA) after-effects such as dysarthria a...
This paper discusses the use of surface electromyography for automatic speech recognition. Electromy...
With 7.5 million people unable to speak due to various physical and mental conditions, patients are ...
Speech is the natural medium of human communication, but audible speech can be overheard by bystande...
This research examines the evaluation of fSEMG (facial surface Electromyogram) for recognizing speec...
This paper presents results of electromyography (EMG) speech recognition which captures the electric...
During the speech, contractions of muscles in the speech apparatus produce myoelectric signals that ...
In our previous work, we reported a surface electromyographic (EMG) continuous speech recognition sy...
In this paper we introduce a speech recognition system based on myoelectric signals. The system hand...
ABSTRACT During the speech, contractions of muscles in the speech apparatus produce myoelectric sign...
A method for synthesizing speech from surface electromyogram (SEMG) signals in a frame-by-frame basi...
For some time, new methods based on a different than acoustic signal analysis are used for speech re...
Surface electromyographic (sEMG) is an acquisition technique based on recording muscles potential ov...
A range of signal processing techniques have been adopted and developed as a methodology which can b...
This paper presents a methodology that uses surface electromyogram (SEMG) signals recorded from the ...
Assistance systems for people with Cerebrovascular Accident (CVA) after-effects such as dysarthria a...
This paper discusses the use of surface electromyography for automatic speech recognition. Electromy...
With 7.5 million people unable to speak due to various physical and mental conditions, patients are ...