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Using Brain Waves as New Biometric Feature for Authenticating a Computer User in Real-Time
Kusuma Mohanchandra, Lingaraju G M, Prashanth Kambli, Vinay Krishnamurthy
Pages - 49 - 57 | Revised - 15-05-2013 | Published - 30-06-2013
MORE INFORMATION
KEYWORDS
Cognitive Biometrics, Authentication, Brain Computer Interface, Electroencephalogram, Power Spectral Density.
ABSTRACT
In this paper we propose an Electroencephalogram based Brain Computer Interface as a new
modality for Person Authentication and develop a screen lock application that will lock and unlock
the computer screen at the users will. The brain waves of the person, recorded in real time are
used as password to unlock the screen. Data fusion from 14 sensors of the Emotiv headset is
done to enhance the signal features. The power spectral density of the intermingle signals is
computed. The channel spectral power in the frequency band of alpha, beta and gamma is used
in the classification task. A two stage checking is done to authenticate the user. A proximity value
of 0.78 and above is considered a good match. The percentage of accuracy in classification is
found to be good. The essence of this work is that the authentication is done in real time based
on the meditation task and no external stimulus is used.
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Associate Professor Kusuma Mohanchandra
Dayananda Sagar College of Engineering - India
kusumalak@gmail.com
Dr. Lingaraju G M
M S Ramaiah Institute of Engineering - India
Mr. Prashanth Kambli
Assistant Professor/Department of Information Science & Engineering M S Ramaiah Institute of Technology Bangalore, 560054, India - India
Mr. Vinay Krishnamurthy
Student, Department of Computer Science Stony Brook University Stony Brook - 11790, NY, USA - United States of America
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