Author/Authors :
Firouzian, I Computer Engineering & IT Department - Shahrood University of Technology, Shahrood, Iran , Firouzian, N Department of Strategic Management - Bank Melli Iran, Tehran, Iran , Hashemi, S.M.R Computer Engineering & IT Department - Shahrood University of Technology, Shahrood, Iran , Kozegar, E Faculty of Engineering - East Guilan, University of Guilan, Guilan, Iran
Abstract :
Monitoring the facial expressions of patients in clinical environments is a necessity in addition to vital sign monitoring. Pain monitoring of patients by facial expressions from video sequences eliminates the need for another person to accompany patients. In this paper, a novel approach is presented to monitor the expression of face and notify in case of pain using tracking fiducial points of face in video sequences and spatio-temporal Local Binary Patterns (LBPs) for eyes and eyebrows. The motion of eight fiducial points on facial features such as mouth, eyes, eyebrows are tracked by Lucas-Kanade algorithm and the movement angles are recorded in a feature vector which along with the spatio-temporal histogram of LBPs creates a concatenated feature vector. Spatio-temporal LBPs boost the proposed algorithm to capture minor deformations on eyes and eyebrows. The feature vectors are then compared and classified using the Chi-square similarity measure. Experimental results show that leveraging spatio-temporal LBPs improves the accuracy by 12% on STOIC database.
Keywords :
Facial Expression , Tracking Fiducial Points , Spatio-temporal , Local Binary Patterns , Pain Expression , Video Sequences