Application of machine learning in attentiveness detection from EEG signal
Date
2022-09-29Publisher
Brac UniversityAuthor
Ridi, Sadia SobhanaTandra, Jannatul Farzana
Emon, Mahmudul Hasan
Mahmud, Md Ridwan
Tabassum, Sumaiya
Metadata
Show full item recordAbstract
Brain-computer interface (BCI) spellers enable severely motor-impaired people to
communicate through brain activity without the use of their muscles. Our brains
precisely predict what we will think. If a human-readable character can be identified
by its appearance, our issues may be resolved. Currently, human, machine, and
brain communication based on machine learning is highly believable. In this study,
we intend to employ the non-invasive brain stimulation technique, often known as
EEG, for the treatment of these individuals. A Braincomputer interface system
based on electroencephalography provides the optimal solution to this issue. It establishes
a link between the brain and the computer system, allowing brain waves
to control our actions. The objective is to determine if a person is paying attention
by recognizing characters from a dataset of P300, which is an event-related potential
(ERP) component, using a BCI design. If a character is identified as a person
paying attention, the data is labelled as target class; otherwise, the data is displayed
as non-target. Our study has resulted in a number of Machine Learning strategy
techniques. In this study, we analyzed the performance of four different types of
Machine Learning Algorithms, including Logistic Regression (LRR), Random Forest
Classifier, AdaBoost classifier, and XGBoost Classifier, to determine the most
accurate algorithm. Custom CNN achieved the highest accuracy among classifiers,
at approximately 88.46%.