Proceedings Article10.1109/CSNT57126.2023.10134633
EEG Based Brain Computer Interface System for Decoding Covert Speech using Deep Neural Networks
Meenakshi Bisla,R. S. Anand +1 more
- 08 Apr 2023
pp 414-419
TL;DR: In this paper , a two-dimensional convolutional neural network and LSTM was used to learn deep features from EEG signals corresponding to the imagery of words to design a BCI(Brain computer interface) system based on human thoughts.
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Abstract: The study aims to learn deep features from EEG signals corresponding to the imagery of words to design a BCI(Brain computer interface) system based on human thoughts. Topological plots of time-averaged EEG signals across all the trials corresponding to the imagery of a particular word are fed as input to the designed deep neural network algorithm. Designed deep learning architecture has an amalgamation of the Two-dimensional convolutional neural network and LSTM that takes the assistance of the capabilities and assets of both neural network architectures. The proposed neural network architecture achieves admirable accuracy in identifying imagined words from the EEG-based Kara one dataset. The accuracy of the designed CNN-LSTM model with topological plots as input features was 20-25% more than chance level accuracy and comparable to the state of arts.
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References
Multiclass Classification of Word Imagination Speech With Hybrid Connectivity Features
TL;DR: The results suggested that EEG responses to imagined speech could be successfully classified using an extreme learning machine.
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Decoding of Covert Vowel Articulation Using Electroencephalography Cortical Currents.
Natsue Yoshimura,Atsushi Nishimoto,Abdelkader Nasreddine Belkacem,Duk Shin,Hiroyuki Kambara,Takashi Hanakawa,Yasuharu Koike +6 more
TL;DR: The proposed electroencephalography (EEG) cortical currents as a new approach for EEG-based brain-computer interface spellers demonstrate the potential utility of EEG cortical currents not only for engineering purposes such as brain- computer interfaces but also for neuroscientific purposes such the identification of neural signaling related to language processing.
EEG classification in a single-trial basis for vowel speech perception using multivariate empirical mode decomposition
TL;DR: The results of this study show that brain responses to vowels can be classified for single trials using MEMD and LDA, which may not only become a useful tool for the brain-computer interface but it could also be used for discriminating the neural correlates of categorical speech perception.
51
Vowel classification using wavelet decomposition during speech imagery
Basil M. Idrees,Omar Farooq +1 more
- 01 Feb 2016
TL;DR: Results showed that indeed the data from EEG rhythms can be used for classification, and a new approach is used to differentiate among the three classes of vowel sound /a/, /u/ and `rest or no action' in pair-wise as well as `combination of two sounds (tasks)' manner.
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Imagined Speech Classification with EEG Signals for Silent Communication: A Preliminary Investigation into Synthetic Telepathy
Katharine Brigham,B. V. K. Vijaya Kumar +1 more
- 18 Jun 2010
TL;DR: Initial results suggest that it is possible to identify imagined speech from measured electrical brain waves.