Title Kriging predictor for facial emotion recognition using numerical proximities of human emotions /
Authors KarbauskaitÄ—, Rasa ; Sakalauskas, Leonidas ; Dzemyda, Gintautas
DOI 10.15388/20-INFOR419
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Is Part of Informatica.. Vilnius : Vilnius University Institute of Data Science and Digital Technologies. 2020, vol. 31, iss. 2, p. 249-275.. ISSN 0868-4952. eISSN 1822-8844
Keywords [eng] Facial emotion recognition ; Fractional Brownian Vector Field ; kriging predictor ; dimensional models of emotions ; classifier
Abstract [eng] Emotion recognition from facial expressions has gained much interest over the last few decades. In the literature, the common approach, used for facial emotion recognition (FER), consists of these steps: image pre-processing, face detection, facial feature extraction, and facial expression classification (recognition). We have developed a method for FER that is absolutely different from this common approach. Our method is based on the dimensional model of emotions as well as on using the kriging predictor of Fractional Brownian Vector Field. The classification problem, related to the recognition of facial emotions, is formulated and solved. The relationship of different emotions is estimated by expert psychologists by putting different emotions as the points on the plane. The goal is to get an estimate of a new picture emotion on the plane by kriging and determine which emotion, identified by psychologists, is the closest one. Seven basic emotions (Joy, Sadness, Surprise, Disgust, Anger, Fear, and Neutral) have been chosen. The accuracy of classification into seven classes has been obtained approximately 50%, if we make a decision on the basis of the closest basic emotion. It has been ascertained that the kriging predictor is suitable for facial emotion recognition in the case of small sets of pictures. More sophisticated classification strategies may increase the accuracy, when grouping of the basic emotions is applied.
Published Vilnius : Vilnius University Institute of Data Science and Digital Technologies
Type Journal article
Language English
Publication date 2020
CC license CC license description