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Feature Optimization of Motor Imagery EEG Classification using ML

Feature Optimization of Motor Imagery EEG Classification using ML

Paperback

General Computers

ISBN10: 6205492458
ISBN13: 9786205492451
Publisher: LAP Lambert Academic Publishing
Published: Dec 17 2024
Pages: 72
Weight: 0.26
Height: 0.17 Width: 6.00 Depth: 9.00
Language: English
Brain-computer interfaces (BCIs) hold great promise in biomedical engineering, particularly for diagnosing critical diseases. Motor imagery (MI) EEG classification, a key BCI process, faces challenges due to the complexity and non-stationary nature of EEG signals. These signals, recorded via electrodes, are digitized and analyzed using feature extraction techniques like FFT, STFT, CSP, and wavelet transforms, with wavelet transform being the most effective.This study proposes a deep neural network-based classification algorithm with teacher-learning-based optimization for feature refinement. Tested on a standard BCI dataset in MATLAB, the algorithm surpasses Bayesian and ensemble machine learning classifiers, enhancing classification accuracy and BCI system performance.

Also from

Singh, Priyanka

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General Computers