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Overall Journal Statistics
Published articles: 234
Acceptance rate: 84.3
Rejection rate: 15.7
Average time to review: 98 days
Average time to publish: 26 days
..
:: Volume 9, Issue 3 (11-2020) ::
تحقیقات نوین در سیستمهای قدرت هوشمند 2020, 9(3): 35-42 Back to browse issues page
Classification of Upper Limb Movement Imaginations Based On a Hybrid Method of Wavelet Transform and Principal Component Analysis for Brain-Computer Interface Applications
Maryam Iyzadpanahi , Mohammad Reza Yousefi * , Neda Behzadfar
Department of Electrical Engineering, Najafabad Branch, Islamic Azad University, Najafabad, Iran, ACECR Institute of Higher Education, Isfahan
Abstract:   (485 Views)
The Brain-Computer Interface in the last decade, the scientific journey has received increasing attention, and the holding of several international competitions and scientific challenges around the world is proof of this claim. In this paper, a six-step algorithm is used to classify the perceptions of limb movements. In the first step, a collection of 288 electroencephalogram data was collected from the BCI Competition Database of 2005. In the second step, data noise reduction was performed using a wavelet bank filter. In the third step, the meow and beta rhythms of the signal in the central region were extracted using a wavelet frequency domain time domain display. In the fourth step, a set of temporal, frequency, and nonlinear properties were extracted from each sub-band, and in the fifth step, the feature space was reduced using principal component analysis. In the sixth step, the feature set was considered as the input of the two nearest neighbor classifiers, the backup vector machine, and the decision tree. All simulations have been executed and implemented under MATLAB software. The results show that the support vector machine classifier with nonlinear kernel and nearest neighbor classifier has an efficiency of more than 80%.
Keywords: Brain and computer interface, electroencephalogram, Mayo rhythm, beta rhythm, wavelet transform
Full-Text [PDF 835 kb]   (391 Downloads)    
Type of Study: Applicable | Subject: Special
Received: 2020/08/20 | Accepted: 2020/11/21 | Published: 2020/11/21
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Iyzadpanahi M, Yousefi M R, Behzadfar N. Classification of Upper Limb Movement Imaginations Based On a Hybrid Method of Wavelet Transform and Principal Component Analysis for Brain-Computer Interface Applications. تحقیقات نوین در سیستمهای قدرت هوشمند 2020; 9 (3) :35-42
URL: http://jeps.dezful.iau.ir/article-1-301-en.html


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Volume 9, Issue 3 (11-2020) Back to browse issues page
تحقیقات نوین در برق Journal of Novel Researches on Electrical Power
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