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Classification of motor imagery by means of cortical current density estimation and Von Neumann entropy

Baharan Kamousi1, Ali Nasiri Amini1 and Bin He2

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The goal of the present study is to employ the source imaging methods such as cortical current density estimation for the classification of left- and right-hand motor imagery tasks, which may be used for brain–computer interface (BCI) applications. The scalp recorded EEG was first preprocessed by surface Laplacian filtering, time-frequency filtering, noise normalization and independent component analysis. Then the cortical imaging technique was used to solve the EEG inverse problem. Cortical current density distributions of left and right trials were classified from each other by exploiting the concept of Von Neumann entropy. The proposed method was tested on three human subjects (180 trials each) and a maximum accuracy of 91.5% and an average accuracy of 88% were obtained. The present results confirm the hypothesis that source analysis methods may improve accuracy for classification of motor imagery tasks. The present promising results using source analysis for classification of motor imagery enhances our ability of performing source analysis from single trial EEG data recorded on the scalp, and may have applications to improved BCI systems.


PACS

87.80.-y Biophysical techniques (research methods)

07.05.Pj Image processing

02.50.-r Probability theory, stochastic processes, and statistics

87.19.Ff Muscles

87.19.R- Mechanical and electrical properties of tissues and organs

87.19.L- Neuroscience

Subjects

Computational physics

Instrumentation and measurement

Medical physics

Biological physics

Dates

Issue 2 (June 2007)

Received 29 July 2006, accepted for publication 7 November 2006

Published 24 January 2007



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