BrainActivity1: A Framework of EEG Data Collection and Machine Learning
Analysis for College Students
- URL: http://arxiv.org/abs/2207.13239v1
- Date: Wed, 27 Jul 2022 01:48:00 GMT
- Title: BrainActivity1: A Framework of EEG Data Collection and Machine Learning
Analysis for College Students
- Authors: Zheng Zhou, Guangyao Dou, Xiaodong Qu
- Abstract summary: During the COVID-19 pandemic, data collection and analysis could be more challenging than before.
This paper explored machine learning algorithms that can run efficiently on personal computers for BCI classification tasks.
The results showed that Random Forest and RBF SVM performed well for EEG classification tasks.
- Score: 3.335856430410638
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Using Machine Learning and Deep Learning to predict cognitive tasks from
electroencephalography (EEG) signals has been a fast-developing area in
Brain-Computer Interfaces (BCI). However, during the COVID-19 pandemic, data
collection and analysis could be more challenging than before. This paper
explored machine learning algorithms that can run efficiently on personal
computers for BCI classification tasks. Also, we investigated a way to conduct
such BCI experiments remotely via Zoom. The results showed that Random Forest
and RBF SVM performed well for EEG classification tasks. The remote experiment
during the pandemic yielded several challenges, and we discussed the possible
solutions; nevertheless, we developed a protocol that grants non-experts who
are interested a guideline for such data collection.
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