2022
DOI: 10.48550/arxiv.2204.11840
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Dynamic Ensemble Bayesian Filter for Robust Control of a Human Brain-machine Interface

Abstract: Brain-machine interfaces (BMIs) aim to provide direct brain control of devices such as prostheses and computer cursors, which have demonstrated great potential for mobility restoration. One major limitation of current BMIs lies in the unstable performance in online control due to the variability of neural signals, which seriously hinders the clinical availability of BMIs. Method: To deal with the neural variability in online BMI control, we propose a dynamic ensemble Bayesian filter (DyEnsemble). DyEnsemble ex… Show more

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