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Licensed Unlicensed Requires Authentication Published by De Gruyter February 4, 2010

P300 Chinese input system based on Bayesian LDA

  • Jing Jin , Brendan Z. Allison , Clemens Brunner , Bei Wang , Xingyu Wang , Jianhua Zhang , Christa Neuper and Gert Pfurtscheller

Abstract

A brain-computer interface (BCI) is a new communication channel between humans and computers that translates brain activity into recognizable command and control signals. Attended events can evoke P300 potentials in the electroencephalogram. Hence, the P300 has been used in BCI systems to spell, control cursors or robotic devices, and other tasks. This paper introduces a novel P300 BCI to communicate Chinese characters. To improve classification accuracy, an optimization algorithm (particle swarm optimization, PSO) is used for channel selection (i.e., identifying the best electrode configuration). The effects of different electrode configurations on classification accuracy were tested by Bayesian linear discriminant analysis offline. The offline results from 11 subjects show that this new P300 BCI can effectively communicate Chinese characters and that the features extracted from the electrodes obtained by PSO yield good performance.


Corresponding author: Jing Jin, Laboratory of Brain-Computer Interfaces, Institute for Knowledge Discovery, Graz University of Technology, Krenngasse 37, A-8010 Graz, Austria Phone: +43-316-873-5306 Fax: +43-316-873-5349

Received: 2009-3-9
Accepted: 2009-9-2
Published Online: 2010-02-04
Published in Print: 2010-02-01

©2010 by Walter de Gruyter Berlin New York

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