Abstract

In recent years, facial expression recognition (FER) has become an attractive research area, which besides the fundamental challenges, it poses, finds application in areas, such as human-computer interaction, clinical psychology, lie detection, pain assessment, and neurology. Generally the approaches to FER consist of three main steps: face detection, feature extraction and expression recognition. The recognition accuracy of FER hinges immensely on the relevance of the selected features in representing the target expressions. In this article, we present a person and gender independent 3D facial expression recognition method, using maximum relevance minimum redundancy geometrical features. The aim is to detect a compact set of features that sufficiently represents the most discriminative features between the target classes. Multi-class one-against-one SVM classifier was employed to recognize the seven facial expressions; neutral, happy, sad, angry, fear, disgust, and surprise. The average recognition accuracy of 92.2% was recorded. Furthermore, inter database homogeneity was investigated between two independent databases the BU-3DFE and UPM-3DFE the results showed a strong homogeneity between the two databases.

Highlights

  • Facial expression recognition (FER) refers to the study of facial changes elicited as a result of relative changes in the shape and positions of the main facial components, such as eyebrows, eyelids, nose, lips, cheeks, and chin

  • The further study by Ekman on facial action coding system [2] in which relative facial muscle movements are described by action units, inspired many researchers to work on facial expression analysis, understanding, and recognition [3,4,5,6,7,8,9,10]

  • At the end of the first experiment, we achieved an average recognition accuracy of 92.2%; for the seven facial expression targeted neutral, happy, sad, angry, fear, disgust, and surprise with the highest recognition of 98.7 and 97.6% coming from the surprise and happy expressions, respectively, while the lowest recognition of 85.5 and 86.8% came from sad and angry, respectively

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Summary

Introduction

Facial expression recognition (FER) refers to the study of facial changes elicited as a result of relative changes in the shape and positions of the main facial components, such as eyebrows, eyelids, nose, lips, cheeks, and chin. Xiaoli et al [8] used a 28 geometrical feature set to recognize seven basic expressions and recorded a recognition rate of 90.2% using the PNN classifier.

Results
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