Enhancing Robustness of Asynchronous EEG-Based Movement Prediction using Classifier Ensembles
Niklas Kueper, Kartik Chari, Elsa Andrea Kirchner

TL;DR
This study investigates how classifier ensembles and sliding-window postprocessing improve the robustness of asynchronous EEG-based movement intention detection, which is crucial for stroke rehabilitation and robot-assisted therapy.
Contribution
It introduces the use of classifier ensembles combined with postprocessing techniques to enhance online detection accuracy of movement intentions from EEG signals.
Findings
Ensembles outperform single models in pseudo-online evaluations.
Increasing postprocessing windows improves classification performance.
Ensembles reduce false positives in online detection.
Abstract
Objective: Stroke is one of the leading causes of disabilities. One promising approach is to extend the rehabilitation with self-initiated robot-assisted movement therapy. To enable this, it is required to detect the patient's intention to move to trigger the assistance of a robotic device. This intention to move can be detected from human surface electroencephalography (EEG) signals; however, it is particularly challenging to decode when classifications are performed online and asynchronously. In this work, the effectiveness of classifier ensembles and a sliding-window postprocessing technique was investigated to enhance the robustness of such asynchronous classification. Approach: To investigate the effectiveness of classifier ensembles and a sliding-window postprocessing, two EEG datasets with 14 healthy subjects who performed self-initiated arm movements were analyzed. Offline and…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Stroke Rehabilitation and Recovery · Gaze Tracking and Assistive Technology
