학술논문

Mental Task Classification Using Artificial Neural Network with Feature Reduction
Document Type
Conference
Source
2020 6th International Conference on Control, Automation and Robotics (ICCAR) Control, Automation and Robotics (ICCAR), 2020 6th International Conference on. :753-757 Apr, 2020
Subject
Robotics and Control Systems
Automation
Scalp
Artificial neural networks
Electroencephalography
Brain-computer interfaces
Task analysis
Robots
brain-machine interface
neural network
feature reduction
Language
Abstract
This paper presents a methodology of feature reduction in Artificial Neural Network for mental task classification. This study used a scalp EEG for recording brain signals. It used five mental tasks: imagined left and right arm movement, imagined left and right foot movement, and, relaxed thinking. Features of the brain signal used were the band powers and power differences. These were then classified offline using the 2-way and the 5-way discrimination method using the Neural Network Toolbox of Matlab®. An early stopping technique was used to improve the classification accuracy of the classifier and the best improvement achieved were 14% and 160 epochs for its accuracy and speed respectively. Feature set were then reduced using the threshold method. As a result, the smallest number of active features that yield the highest accuracy for each subject were 38 for subject C with an accuracy of 100% and 54 for subject E with an accuracy of 97%. The results also showed that band powers were insignificant to mental task classification while power differences in the delta-theta band were the most significant features as we mapped active features to the index of our feature set.