Steps involved in EEG Signal Analysis for Arm Movement

Volume: 10 | Issue: 01 | Year 2024 | Subscription
International Journal of Microwave Engineering and Technology
Received Date: 05/09/2024
Acceptance Date: 06/19/2024
Published On: 2024-06-25
First Page: 43
Last Page: 55

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By: Aayush Diwate, Anushree Ninawe, Ayushman Namdeo, and M. V. Jadhav Jadhav

1-Student, Department of Electronics & Communication Engineering, Singhad College of Engineering, Pune, Maharashtra, India.
2-Student, Department of Electronics & Communication Engineering, Singhad College of Engineering, Pune, Maharashtra, India.
3-Student, Department of Electronics & Communication Engineering, Singhad College of Engineering, Pune, Maharashtra, India.
4-Professor, Department of Electronics & Communication Engineering, Singhad College of Engineering, Pune, Maharashtra, India.

Abstract

This study delves into the intricacies of analyzing EEG signals associated with arm movement motor imagery. We explore established techniques across three key stages: data pre-processing, feature extraction, and classification for movement identification. By critically evaluating the strengths and weaknesses of each approach, we optimize the analysis pipeline for robust decoding of arm movement intent. This work empowers researchers and practitioners to transform raw EEG data into actionable insights, opening doors to diverse applications in medical rehabilitation, industrial control, and immersive entertainment. Notably, it represents a significant step towards harnessing the potential of EEG-driven Brain-Computer Interfaces (BCIs) for developing transformative assistive technologies.

Keywords: Brain Computer Interface (BCI), electroencephalography (EEG), Data Pre-processing, Feature Extraction, Classification

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Citation:

How to cite this article: Aayush Diwate, Anushree Ninawe, Ayushman Namdeo, and M. V. Jadhav Jadhav, Steps involved in EEG Signal Analysis for Arm Movement. International Journal of Microwave Engineering and Technology. 2024; 10(01): 43-55p.

How to cite this URL: Aayush Diwate, Anushree Ninawe, Ayushman Namdeo, and M. V. Jadhav Jadhav, Steps involved in EEG Signal Analysis for Arm Movement. International Journal of Microwave Engineering and Technology. 2024; 10(01): 43-55p. Available from:https://journalspub.com/publication/steps-involved-in-eeg-signal-analysis-for-arm-movement/

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