Abstract
We investigate subjects' brain hemodynamic activities during mental tasks using a nearinfrared spectroscopy. A wavelet and neural network-based methodology is presented for recognition of brain hemodynamic responses. The recognition is performed by a single layer neural network classifier according to a backpropagation algorithm with two error minimizing techniques. The performance of the classifier varied depending on the neural network model, but the performance was usually at least 90%. The classifier usually converged faster and attained a somewhat greater level of performance when an input was presented with only relevant features. The overall classification rate was higher than 94%. The study demonstrates the accurate classifiablity of human brain hemodynamic useful in various brain studies. © 2011 Copyright DGIST.
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Abibullaev, B., An, J., & Moon, J. I. (2011). Neural Network Classification of Brain Hemodynamic Responses from Four Mental Tasks. International Journal of Optomechatronics, 5(4), 340–359. https://doi.org/10.1080/15599612.2011.633209
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