Electroencephalogram Signal Processing with Independent Component
Analysis and Cognitive Stress Classification using Convolutional Neural
Networks
- URL: http://arxiv.org/abs/2108.09817v1
- Date: Sun, 22 Aug 2021 18:38:12 GMT
- Title: Electroencephalogram Signal Processing with Independent Component
Analysis and Cognitive Stress Classification using Convolutional Neural
Networks
- Authors: Venkatakrishnan Sutharsan, Alagappan Swaminathan, Saisrinivasan
Ramachandran, Madan Kumar Lakshmanan, Balaji Mahadevan
- Abstract summary: This paper proposes an idea of using Independent Component Analysis(ICA) along with cross-correlation to de-noise EEG signal.
The results of the recorded data show that this algorithm can eliminate the EOG signal artifact with little loss in EEG data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Electroencephalogram (EEG) is the recording which is the result due to the
activity of bio-electrical signals that is acquired from electrodes placed on
the scalp. In Electroencephalogram signal(EEG) recordings, the signals obtained
are contaminated predominantly by the Electrooculogram(EOG) signal. Since this
artifact has higher magnitude compared to EEG signals, these noise signals have
to be removed in order to have a better understanding regarding the functioning
of a human brain for applications such as medical diagnosis. This paper
proposes an idea of using Independent Component Analysis(ICA) along with
cross-correlation to de-noise EEG signal. This is done by selecting the
component based on the cross-correlation coefficient with a threshold value and
reducing its effect instead of zeroing it out completely, thus reducing the
information loss. The results of the recorded data show that this algorithm can
eliminate the EOG signal artifact with little loss in EEG data. The denoising
is verified by an increase in SNR value and the decrease in cross-correlation
coefficient value. The denoised signals are used to train an Artificial Neural
Network(ANN) which would examine the features of the input EEG signal and
predict the stress levels of the individual.
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