Title of article :
Attention Optimization Method for EEG via the TGAM
Author/Authors :
Wu, Yu University of Electronic Science and Technology of China, China , Xie, Ning School of Computer Science and Engineering - University of Electronic Science and Technology of China, China
Abstract :
Since the 21st century, noninvasive brain-computer interface (BCI) has developed rapidly, and brain-computer devices have
gradually moved from the laboratory to the mass market. Among them, the TGAM (ThinkGear Asic Module) and its
encapsulate algorithm have been adopted by many research teams and faculty members around the world. However, due to the
limited development cost, the effectiveness of the algorithm to calculate data is not satisfactory. This paper proposes an
attention optimization algorithm based on the TGAM for EEG data feedback. Considering that the data output of the TGAM
encapsulate algorithm fluctuates greatly, the delay is high and the accuracy is low. The experimental results demonstrated that
our algorithm can optimize EEG data, so that with the same or even lower delay and without changing the encapsulate
algorithm of the module itself, it can significantly improve the performance of attention data, greatly improve the stability and
accuracy of data, and achieve better results in practical applications.
Keywords :
EEG , TGAM , Optimization
Journal title :
Computational and Mathematical Methods in Medicine