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Reseach Article

Mental Stress Level Classification: A Review

Published on February 2015 by Radhika Deshmukh, Manjusha
International Conference on Advances in Science and Technology
Foundation of Computer Science USA
ICAST2014 - Number 1
February 2015
Authors: Radhika Deshmukh, Manjusha
1c258ba5-f624-4ec1-bb38-24d7eac6801f

Radhika Deshmukh, Manjusha . Mental Stress Level Classification: A Review. International Conference on Advances in Science and Technology. ICAST2014, 1 (February 2015), 15-18.

@article{
author = { Radhika Deshmukh, Manjusha },
title = { Mental Stress Level Classification: A Review },
journal = { International Conference on Advances in Science and Technology },
issue_date = { February 2015 },
volume = { ICAST2014 },
number = { 1 },
month = { February },
year = { 2015 },
issn = 0975-8887,
pages = { 15-18 },
numpages = 4,
url = { /proceedings/icast2014/number1/19469-5007/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Advances in Science and Technology
%A Radhika Deshmukh
%A Manjusha
%T Mental Stress Level Classification: A Review
%J International Conference on Advances in Science and Technology
%@ 0975-8887
%V ICAST2014
%N 1
%P 15-18
%D 2015
%I International Journal of Computer Applications
Abstract

Electroencephalography (EEG) is the tool to record electrical activity over the scalp. This technique is widely used in clinical or research setting, since it is user friendly and non – invasive. In clinical setting, the EEG signal is used to diagnose the disease related to brain. In research setting, the usage of EEG signal is focused on rehabilitation; mental stress study . This paper presented the review on different methods for mental stress level classification. There are four methods for investigation such as principal component analysis, artificial neural network, discrete wavelet transform and spectral centroid technique. The features obtained from methods were extracted from recorded EEG signals and modeled using various classifiers like k-NN and ANN classifier. Based on this four method, we concluded that principal component analysis is better method and it has high accuracy. (98%).

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Index Terms

Computer Science
Information Sciences

Keywords

Eeg Knn Mental Stress Modified Covariance Principal Component Analysis (pca) Neural Network Discrete Wavelet Transform Spectral Centroid Technique.