Neural decoding using a nonlinear generative model for brain-computer interface

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Publication Type pre-print
School or College College of Engineering
Department Electrical & Computer Engineering
Creator Mathews, V. John
Other Author Dantas, Henrique; Kellis, Spencer; Greger, Bradley
Title Neural decoding using a nonlinear generative model for brain-computer interface
Date 2014-01-01
Description Kalman filters have been used to decode neural signals and estimate hand kinematics in many studies. However, most prior work assumes a linear system model, an assumption that is almost certainly violated by neural systems. In this paper, we show that adding nonlinearities to the decoding algorithm improves the accuracy of tracking hand movements using neural signal acquired via a 32-channel micro-electrocorticographic (μECoG) grid placed over the arm and hand representations in the motor cortex. Experimental comparisons indicate that a Kalman filter with a fifth order polynomial generative model relating the hand kinematics signals to the neural signals improved the mean-square tracking performance in the hand movements over a conventional Kalman filter employing a linear system model. This finding is in accord with the current neurophysiological understanding of the decoded signals.
Type Text
Publisher Institute of Electrical and Electronics Engineers (IEEE)
First Page 4683
Last Page 4687
Language eng
Bibliographic Citation Dantas, H., Kellis, S., Mathews, V. J., & Greger, B. (2014). Neural decoding using a nonlinear generative model for brain-computer interface. ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings, 4683-7.
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Format Medium application/pdf
Format Extent 4,163,019 bytes
Identifier uspace,18887
ARK ark:/87278/s60s2zjz
Setname ir_uspace
ID 712657
Reference URL https://collections.lib.utah.edu/ark:/87278/s60s2zjz
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