2014
DOI: 10.1371/journal.pone.0112352
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A Supplementary System for a Brain-Machine Interface Based on Jaw Artifacts for the Bidimensional Control of a Robotic Arm

Abstract: Non-invasive Brain-Machine Interfaces (BMIs) are being used more and more these days to design systems focused on helping people with motor disabilities. Spontaneous BMIs translate user's brain signals into commands to control devices. On these systems, by and large, 2 different mental tasks can be detected with enough accuracy. However, a large training time is required and the system needs to be adjusted on each session. This paper presents a supplementary system that employs BMI sensors, allowing the use of… Show more

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Cited by 13 publications
(6 citation statements)
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References 26 publications
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“…An EEG–EMG-based motion estimation method was proposed for the control of the forearm and the supination/pronation motion of the artificial arm. In 2014, signals produced by jaw clenching were removed from EEG signals for two-dimensional cursor control on a computer screen (Costa et al, 2014 ). This study was later extended to the control of a robotic arm in bi-dimensional workspace.…”
Section: Hardware Combinationmentioning
confidence: 99%
“…An EEG–EMG-based motion estimation method was proposed for the control of the forearm and the supination/pronation motion of the artificial arm. In 2014, signals produced by jaw clenching were removed from EEG signals for two-dimensional cursor control on a computer screen (Costa et al, 2014 ). This study was later extended to the control of a robotic arm in bi-dimensional workspace.…”
Section: Hardware Combinationmentioning
confidence: 99%
“…The validation command is produced by the user voluntarily clenching his jaw. In [ 28 ], the researchers designed a method to classify 5 clenching tasks based on EMG signals extracted from EEG recordings. They evaluated the power spectral density while the users clenched their jaws.…”
Section: Methodsmentioning
confidence: 99%
“…One possibility is to use technology based on Brain-Computer Interface (BCI) systems, which allows the direct communication between the central nervous system and the outside world without having to use the peripheral nervous system, creating a direct link between the brain and the outside world. Nowadays we can already find several uses for this technology such as the control of a robotic arm [1] [2], neurorehabilitation [3] [4] [5], control of video games [6], and classification of imagined words [7] [8]. All of these works prove that BCI systems are a real technology, not only theoretical, that is starting to achieve its first practical results.…”
Section: Introductionmentioning
confidence: 99%