Feature Extraction of Electroencephalography Signals Using Fast Fourier Transform


Hindarto Hindarto
Sumarno Sumarno
2016

Abstract

This article discusses a method within the area of brain-computer interface. The proposed method is to use the features extracted from the Electroencephalograph signal and a three hidden-layer artificial neural network to map the brain signal features to the computer cursor movement. The evaluated features are the root mean square and the average power spectrum. The empirical evaluation using 200 records taken from 2003 BCI Competition dataset shows that the current approach can accurately classify a simple cursor movement within 92.5% accuracy in a short computation time.

Full Text Cite


Related Journals

The Improvement of Computer Network Performance with Bandwidth Management in Kemurnian II Senior High School

An Analysis of Sales Information System and Competitive Advantage (Study Case of Ud. Citra Helmet)

Knowledge Management Untuk Customer Service


More

Search Research and Publications

CARI TULISAN is a scientific publication indexing site that helps everyone find research results and relevant data from papers, journals, books, research reports, and so on. Collected from various repositories, it makes scattered scientific research easily searchable.
All articles and content on this site are copyrighted works of the relevant authors that have been published as a result of scientific research. CARI TULISAN never distributes and supports pirated content.