Upper Limb Movement Recognition utilising EEG and EMG Signals for
Rehabilitative Robotics
- URL: http://arxiv.org/abs/2207.08650v1
- Date: Mon, 18 Jul 2022 14:51:23 GMT
- Title: Upper Limb Movement Recognition utilising EEG and EMG Signals for
Rehabilitative Robotics
- Authors: Wang Zihao
- Abstract summary: We propose a novel decision-level multisensor fusion technique for upper limb movement classification.
The system will integrate EEG signals with EMG signals, retrieve effective information from both sources to understand and predict the desire of the user.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Upper limb movement classification, which maps input signals to the target
activities, is one of the crucial areas in the control of rehabilitative
robotics. Classifiers are trained for the rehabilitative system to comprehend
the desires of the patient whose upper limbs do not function properly.
Electromyography (EMG) signals and Electroencephalography (EEG) signals are
used widely for upper limb movement classification. By analysing the
classification results of the real-time EEG and EMG signals, the system can
understand the intention of the user and predict the events that one would like
to carry out. Accordingly, it will provide external help to the user to assist
one to perform the activities. However, not all users process effective EEG and
EMG signals due to the noisy environment. The noise in the real-time data
collection process contaminates the effectiveness of the data. Moreover, not
all patients process strong EMG signals due to muscle damage and neuromuscular
disorder. To address these issues, we would like to propose a novel
decision-level multisensor fusion technique. In short, the system will
integrate EEG signals with EMG signals, retrieve effective information from
both sources to understand and predict the desire of the user, and thus provide
assistance. By testing out the proposed technique on a publicly available
WAY-EEG-GAL dataset, which contains EEG and EMG signals that were recorded
simultaneously, we manage to conclude the feasibility and effectiveness of the
novel system.
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