Novel EEG-based BCIs for Elderly Rehabilitation Enhancement
Aurora Saibene, Francesca Gasparini, Jordi Sol\'e-Casals

TL;DR
This paper introduces a novel EEG signal processing method using multivariate empirical mode decomposition and entropy-based IMF selection to improve BCI performance for elderly rehabilitation by extracting relevant features and generating artificial training data.
Contribution
The study proposes a new methodology for EEG signal decomposition and relevant component selection, enhancing BCI robustness and training data quality for elderly rehabilitation.
Findings
Improved classification accuracy with relevant IMF selection.
Effective generation of artificial data for BCI training.
Enhanced signal reliability and noise reduction.
Abstract
The ageing process may lead to cognitive and physical impairments, which may affect elderly everyday life. In recent years, the use of Brain Computer Interfaces (BCIs) based on Electroencephalography (EEG) has revealed to be particularly effective to promote and enhance rehabilitation procedures, especially by exploiting motor imagery experimental paradigms. Moreover, BCIs seem to increase patients' engagement and have proved to be reliable tools for elderly overall wellness improvement. However, EEG signals usually present a low signal-to-noise ratio and can be recorded for a limited time. Thus, irrelevant information and faulty samples could affect the BCI performance. Introducing a methodology that allows the extraction of informative components from the EEG signal while maintaining its intrinsic characteristics, may provide a solution to both the described issues: noisy data may be…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neuroscience and Neural Engineering · Blind Source Separation Techniques
