Uncued brain-computer interfaces: a variational hidden markov model of mental state dynamics
نویسندگان
چکیده
This paper describes a method to improve uncued BrainComputer Interfaces based on motor imagery. Our algorithm aims at ltering the continuous classi er output by incorporating prior knowledge about the mental state dynamics. On dataset IVb of BCI competition III, we compare the performances of four di erent methods by combining smoothed probabilities ltered by our algorithm/direct classi er output and static/dynamic classi er. We demonstrate that the combination of our algorithm with a dynamic classi er yields the best results.
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تاریخ انتشار 2009