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An Experimental Platform to Study the Closed-loop Performance of Brain-machine Interfaces
Published on: March 10, 2011
Luis H Cubillos1, Guy Revach2, Matthew J Mender1
1Departments of Electrical & Computer Engineering, Biomedical Engineering, Robotics, Computational Medicine & Bioinformatics, and Neurosurgery, University of Michigan, USA.
This study introduces KalmanNet, a novel brain-machine interface (BMI) decoder that combines Kalman filter (KF) explainability with deep learning performance for paralysis patients. KalmanNet achieves high accuracy in predicting movements, offering a safer, more interpretable alternative to current deep learning models.
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