Pain Detection/Classification
Framework including Face Recognition based on the Analysis of Facial
Expressions for E-Health Systems
Fatma
Elgendy1, Mahmoud Alshewimy2, and Amany Sarhan2
1Kafrelshiekh
Higher Institute for Engineering and Technology, Egypt
2Computer
and Control Engineering Department, Tanta University, Egypt
Abstract: Facial expressions can demonstrate
the presence and degree of pain of humans, which is a vital topic in E-healthcare
domain specially for elderly people or patients with special needs. This paper
presents a framework for pain detection, pain classification, and face
recognition using feature extraction, feature selection, and classification
techniques. Pain intensity is measured by Prkachin and Solomon pain intensity
scale. Experimental results showed that the proposed framework is a promising
one compared with previously works. It achieves 91% accuracy in pain detection,
99.89% accuracy in face recognition, and 78%, 92%, 88% accuracy, respectively, for three levels of pain classification.
Keywords: E-health, Gabor filter, Adaboost, relieff filter, SADE, KNN.
Received January 12, 2020; accepted March
19, 2020