Thermal Pain Level Estimation Method with Heart Rate and Cerebral Blood Flow
Journal Title: International Journal of Advanced Computer Science & Applications - Year 2019, Vol 10, Issue 7
Abstract
Method for thermal pain level estimation with heart rate and cerebral blood flow using SVM is proposed. Through experiments, it is found that thermal pain level is much sensitive to the cerebral blood flow rather than heart rate. Also, it is found that the performance of thermal pain estimation is much better than the previously proposed method with the number of blinks, the enlarging rate of pupil size.
Authors and Affiliations
Kohei Arai, Asato Mizoguchi, Hiroshi Okumura
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