Unsupervised adaptation of brain machine interface decoders
Tayfun G\"urel, Carsten Mehring

TL;DR
This paper introduces an unsupervised method for adapting brain-machine interface decoders during autonomous operation, maintaining high performance despite nonstationarities without requiring calibration phases.
Contribution
It presents a novel cost-function-based learning algorithm that enables continuous, unsupervised adaptation of BMI decoders using neuronal recordings, improving stability and accuracy.
Findings
The method achieves fast, accurate target-reaching trajectories in simulations.
It maintains stable performance over time despite nonstationary neuronal tuning.
Optional use of neuronal error signals enhances adaptation robustness.
Abstract
The performance of neural decoders can degrade over time due to nonstationarities in the relationship between neuronal activity and behavior. In this case, brain-machine interfaces (BMI) require adaptation of their decoders to maintain high performance across time. One way to achieve this is by use of periodical calibration phases, during which the BMI system (or an external human demonstrator) instructs the user to perform certain movements or behaviors. This approach has two disadvantages: (i) calibration phases interrupt the autonomous operation of the BMI and (ii) between two calibration phases the BMI performance might not be stable but continuously decrease. A better alternative would be that the BMI decoder is able to continuously adapt in an unsupervised manner during autonomous BMI operation, i.e. without knowing the movement intentions of the user. In the present article, we…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Neuroscience and Neural Engineering
