2011
DOI: 10.1088/1741-2560/8/4/049801
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Use of a Bayesian maximum-likelihood classifier to generate training data for brain–machine interfaces

Abstract: Brain-machine interface decoding algorithms need to be predicated on assumptions that are easily met outside of an experimental setting to enable a practical clinical device. Given present technology limitations, there is a need for decoding algorithms which a) are not dependent upon a large number of neurons for control, b) are adaptable to alternative sources of neuronal input such as local field potentials, and c) require only marginal training data for daily calibrations. Moreover, practical algorithms mus… Show more

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Cited by 21 publications
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References 48 publications
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