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Graz brain-computer interface II: towards communication between humans and computers based on online classification of three different EEG patterns.

作者信息

Kalcher J, Flotzinger D, Neuper C, Gölly S, Pfurtscheller G

机构信息

Department of Medical Informatics, Graz University of Technology, Austria.

出版信息

Med Biol Eng Comput. 1996 Sep;34(5):382-8. doi: 10.1007/BF02520010.

DOI:10.1007/BF02520010
PMID:8945865
Abstract

The paper describes work on the brain--computer interface (BCI). The BCI is designed to help patients with severe motor impairment (e.g. amyotropic lateral sclerosis) to communicate with their environment through wilful modification of their EEG. To establish such a communication channel, two major prerequisites have to be fulfilled: features that reliably describe several distinctive brain states have to be available, and these features must be classified on-line, i.e. on a single-trial basis. The prototype Graz BCI II, which is based on the distinction of three different types of EEG pattern, is described, and results of online and offline classification performance of four subjects are reported. The online results suggest that, in the best case, a classification accuracy of about 60% is reached after only three training sessions. The online results show how selection of specific frequency bands influences the classification performance in single-trial data.

摘要

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