Publication Type : Journal Article
Publisher : Elsevier
Source : Computers and Electrical Engineering (Elsevier), 40(5), pp. 1741–1749, 2014.[Q1,IF:0.992(2013)].
Url : https://www.sciencedirect.com/science/article/abs/pii/S0045790614000251
Campus : Chennai
School : School of Engineering
Year : 2013
Abstract : In recent years, various physiological signal based rehabilitation systems have been developed for the physically disabled in which electroencephalographic (EEG) signal is one among them. The efficiency of such a system depends upon the signal processing and classification algorithms. In order to develop an EEG based rehabilitation or assistive system, it is necessary to develop an effective EEG signal processing algorithm. This paper proposes Stockwell transform (ST) based analysis of EEG dynamics during different mental tasks. EEG signals from Keirn and Aunon database were used in this study. Three classifiers were employed such as k-means nearest neighborhood (kNN), linear discriminant analysis (LDA) and support vector machine (SVM) to test the strength of the proposed features. Ten-fold cross validation method was used to demonstrate the consistency of the classification results. Using the proposed method, an average accuracy ranging between 84.72% and 98.95% was achieved for multi-class problems (five mental tasks).
Cite this Research Publication : M. Hariharan, Vikneswaran Vijean, R. Sindhu, P. Divakar, A. Saidatul and Sazali Yaacob, “Classification of mental tasks using Stockwell transform”, Computers and Electrical Engineering (Elsevier), 40(5), pp. 1741–1749, 2014.[Q1,IF:0.992(2013)].