LGAISPNCApr 22, 2022

Dynamic Ensemble Bayesian Filter for Robust Control of a Human Brain-machine Interface

arXiv:2204.11840v123 citationsh-index: 24
Originality Incremental advance
AI Analysis

This addresses the issue of clinical availability for brain-machine interfaces by enhancing robustness in neural decoding, though it appears incremental as it builds on existing Bayesian filters.

The paper tackles the problem of unstable performance in online brain-machine interface control due to neural signal variability by proposing a dynamic ensemble Bayesian filter, which significantly improves control accuracy with a 13.9% increase in success rate and 13.5% reduction in reach time compared to a baseline method.

Objective: 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 extends Bayesian filters with a dynamic measurement model, which adjusts its parameters in time adaptively with neural changes. This is achieved by learning a pool of candidate functions and dynamically weighting and assembling them according to neural signals. In this way, DyEnsemble copes with variability in signals and improves the robustness of online control. Results: Online BMI experiments with a human participant demonstrate that, compared with the velocity Kalman filter, DyEnsemble significantly improves the control accuracy (increases the success rate by 13.9% and reduces the reach time by 13.5% in the random target pursuit task) and robustness (performs more stably over different experiment days). Conclusion: Our results demonstrate the superiority of DyEnsemble in online BMI control. Significance: DyEnsemble frames a novel and flexible framework for robust neural decoding, which is beneficial to different neural decoding applications.

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