Automatic movement-prothesis control aims to increase the quality of life for patients with diseases causing temporary or permanent paralysis or, in the worst case, the lost of limbs. This technology requires the interaction between the user and the device through a control interface that detects the user's movement intention. Basing on the Motor-Imagery theory, many researchers have explored a wide variety of Classifiers to identify patients' physiological signals from many different sources in order to detect patients' moves intentions. We here propose a novel approach relying on the use of a Weightless Neural Network-based classifier, whose design lends itself to an easy hardware implementation. Additionally, we employ a non-invasive light weight and easy donning EEG- helmet in order to provide a portable controller interface. The developed interface is connected to a robotic hand for controlling open/close actions. We compared the proposed classifier with state of the art classifiers by showing that the proposed method achieves similar performance and contempo- raneously represents a viable and practicable solution due to its portability on hardware devices, which will permit its direct implementation on the helmet board.

A Weightless Neural Network as a Classifier to Translate EEG Signals into Robotic hand Commands

DE GREGORIO, MASSIMO;GIORDANO, MAURIZIO
2018

Abstract

Automatic movement-prothesis control aims to increase the quality of life for patients with diseases causing temporary or permanent paralysis or, in the worst case, the lost of limbs. This technology requires the interaction between the user and the device through a control interface that detects the user's movement intention. Basing on the Motor-Imagery theory, many researchers have explored a wide variety of Classifiers to identify patients' physiological signals from many different sources in order to detect patients' moves intentions. We here propose a novel approach relying on the use of a Weightless Neural Network-based classifier, whose design lends itself to an easy hardware implementation. Additionally, we employ a non-invasive light weight and easy donning EEG- helmet in order to provide a portable controller interface. The developed interface is connected to a robotic hand for controlling open/close actions. We compared the proposed classifier with state of the art classifiers by showing that the proposed method achieves similar performance and contempo- raneously represents a viable and practicable solution due to its portability on hardware devices, which will permit its direct implementation on the helmet board.
2018
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR
Istituto di Scienze Applicate e Sistemi Intelligenti "Eduardo Caianiello" - ISASI
brain-computer interfaces
diseases
electroencephalography
helmet mounted displays
manipulators
medical robotics
medical signal processing
neural nets
signal classification
user interfaces
portable controller interface
robotic hand commands
automatic movement-prothesis control
temporary
permanent paralysis
control interface
Motor-Imagery theory
weightless neural network
EEG signal translation
EEG-helmet
Random access memory
Discrete wavelet transforms
Retina
Computer architecture
Robot sensing systems
Electroencephalography
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/342865
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